Artificial intelligence (AI) is intelligence—perceiving, synthesizing, and inferring information—demonstrated by machines, as opposed to intelligence displayed by animals such as humans. Example tasks in which this is done include speech recognition, computer vision, translation between (natural) languages, as well as other mappings of inputs. The Oxford English Dictionary of Oxford University Press defines artificial intelligence as:[1]
the theory and development of computer systems able to perform tasks that normally require human intelligence, such as visual perception, speech recognition, decision-making, and translation between languages.
AI applications include advanced web search engines (e.g., Google), recommendation systems (used by YouTube, Amazon and Netflix), understanding human speech (such as Siri and Alexa), self-driving cars (e.g., Waymo), automated decision-making and competing at the highest level in strategic game systems (such as chess and Go).[2]
As machines become increasingly capable, tasks considered to require «intelligence» are often removed from the definition of AI, a phenomenon known as the AI effect.[3] For instance, optical character recognition is frequently excluded from things considered to be AI,[4] having become a routine technology.[5]
Artificial intelligence was founded as an academic discipline in 1956, and in the years since has experienced several waves of optimism,[6][7] followed by disappointment and the loss of funding (known as an «AI winter»),[8][9] followed by new approaches, success and renewed funding.[7][10] AI research has tried and discarded many different approaches since its founding, including simulating the brain, modeling human problem solving, formal logic, large databases of knowledge and imitating animal behavior. In the first decades of the 21st century, highly mathematical-statistical machine learning has dominated the field, and this technique has proved highly successful, helping to solve many challenging problems throughout industry and academia.[10][11]
The various sub-fields of AI research are centered around particular goals and the use of particular tools. The traditional goals of AI research include reasoning, knowledge representation, planning, learning, natural language processing, perception, and the ability to move and manipulate objects.[a] General intelligence (the ability to solve an arbitrary problem) is among the field’s long-term goals.[12] To solve these problems, AI researchers have adapted and integrated a wide range of problem-solving techniques – including search and mathematical optimization, formal logic, artificial neural networks, and methods based on statistics, probability and economics. AI also draws upon computer science, psychology, linguistics, philosophy, and many other fields.
The field was founded on the assumption that human intelligence «can be so precisely described that a machine can be made to simulate it».[b]
This raised philosophical arguments about the mind and the ethical consequences of creating artificial beings endowed with human-like intelligence; these issues have previously been explored by myth, fiction and philosophy since antiquity.[14] Computer scientists and philosophers have since suggested that AI may become an existential risk to humanity if its rational capacities are not steered towards beneficial goals.[c]
History
Artificial beings with intelligence appeared as storytelling devices in antiquity,[15]
and have been common in fiction, as in Mary Shelley’s Frankenstein or Karel Čapek’s R.U.R.[16] These characters and their fates raised many of the same issues now discussed in the ethics of artificial intelligence.[17]
The study of mechanical or «formal» reasoning began with philosophers and mathematicians in antiquity. The study of mathematical logic led directly to Alan Turing’s theory of computation, which suggested that a machine, by shuffling symbols as simple as «0» and «1», could simulate any conceivable act of mathematical deduction. This insight that digital computers can simulate any process of formal reasoning is known as the Church–Turing thesis.[18] This, along with concurrent discoveries in neurobiology, information theory and cybernetics, led researchers to consider the possibility of building an electronic brain.[19]
The first work that is now generally recognized as AI was McCullouch and Pitts’ 1943 formal design for Turing-complete «artificial neurons».[20]
By the 1950s, two visions for how to achieve machine intelligence emerged. One vision, known as Symbolic AI or GOFAI, was to use computers to create a symbolic representation of the world and systems that could reason about the world. Proponents included Allen Newell, Herbert A. Simon, and Marvin Minsky. Closely associated with this approach was the «heuristic search» approach, which likened intelligence to a problem of exploring a space of possibilities for answers. The second vision, known as the connectionist approach, sought to achieve intelligence through learning. Proponents of this approach, most prominently Frank Rosenblatt, sought to connect Perceptron in ways inspired by connections of neurons.[21] James Manyika and others have compared the two approaches to the mind (Symbolic AI) and the brain (connectionist). Manyika argues that symbolic approaches dominated the push for artificial intelligence in this period, due in part to its connection to intellectual traditions of Descarte, Boole, Gottlob Frege, Bertrand Russell, and others. Connectionist approaches based on cybernetics or artificial neural networks were pushed to the background but have gained new prominence in recent decades.[22]
The field of AI research was born at a workshop at Dartmouth College in 1956.[d][25]
The attendees became the founders and leaders of AI research.[e]
They and their students produced programs that the press described as «astonishing»:[f]
computers were learning checkers strategies, solving word problems in algebra, proving logical theorems and speaking English.[g][27]
By the middle of the 1960s, research in the U.S. was heavily funded by the Department of Defense[28]
and laboratories had been established around the world.[29]
Researchers in the 1960s and the 1970s were convinced that symbolic approaches would eventually succeed in creating a machine with artificial general intelligence and considered this the goal of their field.[30]
Herbert Simon predicted, «machines will be capable, within twenty years, of doing any work a man can do».[31]
Marvin Minsky agreed, writing, «within a generation … the problem of creating ‘artificial intelligence’ will substantially be solved».[32] They had failed to recognize the difficulty of some of the remaining tasks. Progress slowed and in 1974, in response to the criticism of Sir James Lighthill[33]
and ongoing pressure from the US Congress to fund more productive projects, both the U.S. and British governments cut off exploratory research in AI. The next few years would later be called an «AI winter», a period when obtaining funding for AI projects was difficult.[8]
In the early 1980s, AI research was revived by the commercial success of expert systems,[34]
a form of AI program that simulated the knowledge and analytical skills of human experts. By 1985, the market for AI had reached over a billion dollars. At the same time, Japan’s fifth generation computer project inspired the U.S. and British governments to restore funding for academic research.[7]
However, beginning with the collapse of the Lisp Machine market in 1987, AI once again fell into disrepute, and a second, longer-lasting winter began.[9]
Many researchers began to doubt that the symbolic approach would be able to imitate all the processes of human cognition, especially perception, robotics, learning and pattern recognition. A number of researchers began to look into «sub-symbolic» approaches to specific AI problems.[35] Robotics researchers, such as Rodney Brooks, rejected symbolic AI and focused on the basic engineering problems that would allow robots to move, survive, and learn their environment.[h]
Interest in neural networks and «connectionism» was revived by Geoffrey Hinton, David Rumelhart and others in the middle of the 1980s.[40]
Soft computing tools were developed in the 1980s, such as neural networks, fuzzy systems, Grey system theory, evolutionary computation and many tools drawn from statistics or mathematical optimization.
AI gradually restored its reputation in the late 1990s and early 21st century by finding specific solutions to specific problems. The narrow focus allowed researchers to produce verifiable results, exploit more mathematical methods, and collaborate with other fields (such as statistics, economics and mathematics).[41]
By 2000, solutions developed by AI researchers were being widely used, although in the 1990s they were rarely described as «artificial intelligence».[11]
Faster computers, algorithmic improvements, and access to large amounts of data enabled advances in machine learning and perception; data-hungry deep learning methods started to dominate accuracy benchmarks around 2012.[42]
According to Bloomberg’s Jack Clark, 2015 was a landmark year for artificial intelligence, with the number of software projects that use AI within Google increased from a «sporadic usage» in 2012 to more than 2,700 projects.[i] He attributes this to an increase in affordable neural networks, due to a rise in cloud computing infrastructure and to an increase in research tools and datasets.[10] In a 2017 survey, one in five companies reported they had «incorporated AI in some offerings or processes».[43] The amount of research into AI (measured by total publications) increased by 50% in the years 2015–2019.[44]
Numerous academic researchers became concerned that AI was no longer pursuing the original goal of creating versatile, fully intelligent machines. Much of current research involves statistical AI, which is overwhelmingly used to solve specific problems, even highly successful techniques such as deep learning. This concern has led to the subfield of artificial general intelligence (or «AGI»), which had several well-funded institutions by the 2010s.[12]
Goals
The general problem of simulating (or creating) intelligence has been broken down into sub-problems. These consist of particular traits or capabilities that researchers expect an intelligent system to display. The traits described below have received the most attention.[a]
Reasoning, problem-solving
Early researchers developed algorithms that imitated step-by-step reasoning that humans use when they solve puzzles or make logical deductions.[45]
By the late 1980s and 1990s, AI research had developed methods for dealing with uncertain or incomplete information, employing concepts from probability and economics.[46]
Many of these algorithms proved to be insufficient for solving large reasoning problems because they experienced a «combinatorial explosion»: they became exponentially slower as the problems grew larger.[47]
Even humans rarely use the step-by-step deduction that early AI research could model. They solve most of their problems using fast, intuitive judgments.[48]
Knowledge representation
An ontology represents knowledge as a set of concepts within a domain and the relationships between those concepts.
Knowledge representation and knowledge engineering[49]
allow AI programs to answer questions intelligently and make deductions about real-world facts.
A representation of «what exists» is an ontology: the set of objects, relations, concepts, and properties formally described so that software agents can interpret them.[50]
The most general ontologies are called upper ontologies, which attempt to provide a foundation for all other knowledge and act as mediators between domain ontologies that cover specific knowledge about a particular knowledge domain (field of interest or area of concern). A truly intelligent program would also need access to commonsense knowledge; the set of facts that an average person knows. The semantics of an ontology is typically represented in description logic, such as the Web Ontology Language.[51]
AI research has developed tools to represent specific domains, such as objects, properties, categories and relations between objects;[51]
situations, events, states and time;[52]
causes and effects;[53]
knowledge about knowledge (what we know about what other people know);.[54]
default reasoning (things that humans assume are true until they are told differently and will remain true even when other facts are changing);
[55]
as well as other domains. Among the most difficult problems in AI are: the breadth of commonsense knowledge (the number of atomic facts that the average person knows is enormous);[56]
and the sub-symbolic form of most commonsense knowledge (much of what people know is not represented as «facts» or «statements» that they could express verbally).[48]
Formal knowledge representations are used in content-based indexing and retrieval,[57]
scene interpretation,[58]
clinical decision support,[59]
knowledge discovery (mining «interesting» and actionable inferences from large databases),[60]
and other areas.[61]
Learning
Machine learning (ML), a fundamental concept of AI research since the field’s inception,[j]
is the study of computer algorithms that improve automatically through experience.[k]
Unsupervised learning finds patterns in a stream of input. Supervised learning requires a human to label the input data first, and comes in two main varieties: classification and numerical regression. Classification is used to determine what category something belongs in – the program sees a number of examples of things from several categories and will learn to classify new inputs. Regression is the attempt to produce a function that describes the relationship between inputs and outputs and predicts how the outputs should change as the inputs change. Both classifiers and regression learners can be viewed as «function approximators» trying to learn an unknown (possibly implicit) function; for example, a spam classifier can be viewed as learning a function that maps from the text of an email to one of two categories, «spam» or «not spam».[65]
In reinforcement learning the agent is rewarded for good responses and punished for bad ones. The agent classifies its responses to form a strategy for operating in its problem space.[66]
Transfer learning is when the knowledge gained from one problem is applied to a new problem.[67]
Computational learning theory can assess learners by computational complexity, by sample complexity (how much data is required), or by other notions of optimization.[68]
Natural language processing
Natural language processing (NLP)[69]
allows machines to read and understand human language. A sufficiently powerful natural language processing system would enable natural-language user interfaces and the acquisition of knowledge directly from human-written sources, such as newswire texts. Some straightforward applications of NLP include information retrieval, question answering and machine translation.[70]
Symbolic AI used formal syntax to translate the deep structure of sentences into logic. This failed to produce useful applications, due to the intractability of logic[47] and the breadth of commonsense knowledge.[56] Modern statistical techniques include co-occurrence frequencies (how often one word appears near another), «Keyword spotting» (searching for a particular word to retrieve information), transformer-based deep learning (which finds patterns in text), and others.[71] They have achieved acceptable accuracy at the page or paragraph level, and, by 2019, could generate coherent text.[72]
Perception
Machine perception[73]
is the ability to use input from sensors (such as cameras, microphones, wireless signals, and active lidar, sonar, radar, and tactile sensors) to deduce aspects of the world. Applications include speech recognition,[74]
facial recognition, and object recognition.[75]
Computer vision is the ability to analyze visual input.[76]
Kismet, a robot with rudimentary social skills[77]
Affective computing is an interdisciplinary umbrella that comprises systems that recognize, interpret, process or simulate human feeling, emotion and mood.[78]
For example, some virtual assistants are programmed to speak conversationally or even to banter humorously; it makes them appear more sensitive to the emotional dynamics of human interaction, or to otherwise facilitate human–computer interaction.
However, this tends to give naïve users an unrealistic conception of how intelligent existing computer agents actually are.[79] Moderate successes related to affective computing include textual sentiment analysis and, more recently, multimodal sentiment analysis), wherein AI classifies the affects displayed by a videotaped subject.[80]
General intelligence
A machine with general intelligence can solve a wide variety of problems with breadth and versatility similar to human intelligence. There are several competing ideas about how to develop artificial general intelligence. Hans Moravec and Marvin Minsky argue that work in different individual domains can be incorporated into an advanced multi-agent system or cognitive architecture with general intelligence.[81]
Pedro Domingos hopes that there is a conceptually straightforward, but mathematically difficult, «master algorithm» that could lead to AGI.[82]
Others believe that anthropomorphic features like an artificial brain[83]
or simulated child development[l]
will someday reach a critical point where general intelligence emerges.
Tools
Search and optimization
AI can solve many problems by intelligently searching through many possible solutions.[84] Reasoning can be reduced to performing a search. For example, logical proof can be viewed as searching for a path that leads from premises to conclusions, where each step is the application of an inference rule.[85] Planning algorithms search through trees of goals and subgoals, attempting to find a path to a target goal, a process called means-ends analysis.[86] Robotics algorithms for moving limbs and grasping objects use local searches in configuration space.[87]
Simple exhaustive searches[88]
are rarely sufficient for most real-world problems: the search space (the number of places to search) quickly grows to astronomical numbers. The result is a search that is too slow or never completes. The solution, for many problems, is to use «heuristics» or «rules of thumb» that prioritize choices in favor of those more likely to reach a goal and to do so in a shorter number of steps. In some search methodologies, heuristics can also serve to eliminate some choices unlikely to lead to a goal (called «pruning the search tree»). Heuristics supply the program with a «best guess» for the path on which the solution lies.[89]
Heuristics limit the search for solutions into a smaller sample size.[90]
A very different kind of search came to prominence in the 1990s, based on the mathematical theory of optimization. For many problems, it is possible to begin the search with some form of a guess and then refine the guess incrementally until no more refinements can be made. These algorithms can be visualized as blind hill climbing: we begin the search at a random point on the landscape, and then, by jumps or steps, we keep moving our guess uphill, until we reach the top. Other related optimization algorithms include random optimization, beam search and metaheuristics like simulated annealing.[91] Evolutionary computation uses a form of optimization search. For example, they may begin with a population of organisms (the guesses) and then allow them to mutate and recombine, selecting only the fittest to survive each generation (refining the guesses). Classic evolutionary algorithms include genetic algorithms, gene expression programming, and genetic programming.[92] Alternatively, distributed search processes can coordinate via swarm intelligence algorithms. Two popular swarm algorithms used in search are particle swarm optimization (inspired by bird flocking) and ant colony optimization (inspired by ant trails).[93]
Logic
Logic[94]
is used for knowledge representation and problem-solving, but it can be applied to other problems as well. For example, the satplan algorithm uses logic for planning[95]
and inductive logic programming is a method for learning.[96]
Several different forms of logic are used in AI research. Propositional logic[97] involves truth functions such as «or» and «not». First-order logic[98]
adds quantifiers and predicates and can express facts about objects, their properties, and their relations with each other. Fuzzy logic assigns a «degree of truth» (between 0 and 1) to vague statements such as «Alice is old» (or rich, or tall, or hungry), that are too linguistically imprecise to be completely true or false.[99]
Default logics, non-monotonic logics and circumscription are forms of logic designed to help with default reasoning and the qualification problem.[55]
Several extensions of logic have been designed to handle specific domains of knowledge, such as description logics;[51]
situation calculus, event calculus and fluent calculus (for representing events and time);[52]
causal calculus;[53]
belief calculus (belief revision); and modal logics.[54]
Logics to model contradictory or inconsistent statements arising in multi-agent systems have also been designed, such as paraconsistent logics.[100]
Probabilistic methods for uncertain reasoning
Expectation-maximization clustering of Old Faithful eruption data starts from a random guess but then successfully converges on an accurate clustering of the two physically distinct modes of eruption.
Many problems in AI (including in reasoning, planning, learning, perception, and robotics) require the agent to operate with incomplete or uncertain information. AI researchers have devised a number of tools to solve these problems using methods from probability theory and economics.[101]
Bayesian networks[102]
are a very general tool that can be used for various problems, including reasoning (using the Bayesian inference algorithm),[m][104]
learning (using the expectation-maximization algorithm),[n][106]
planning (using decision networks)[107] and perception (using dynamic Bayesian networks).[108]
Probabilistic algorithms can also be used for filtering, prediction, smoothing and finding explanations for streams of data, helping perception systems to analyze processes that occur over time (e.g., hidden Markov models or Kalman filters).[108]
A key concept from the science of economics is «utility», a measure of how valuable something is to an intelligent agent. Precise mathematical tools have been developed that analyze how an agent can make choices and plan, using decision theory, decision analysis,[109]
and information value theory.[110] These tools include models such as Markov decision processes,[111] dynamic decision networks,[108] game theory and mechanism design.[112]
Classifiers and statistical learning methods
The simplest AI applications can be divided into two types: classifiers («if shiny then diamond») and controllers («if diamond then pick up»). Controllers do, however, also classify conditions before inferring actions, and therefore classification forms a central part of many AI systems. Classifiers are functions that use pattern matching to determine the closest match. They can be tuned according to examples, making them very attractive for use in AI. These examples are known as observations or patterns. In supervised learning, each pattern belongs to a certain predefined class. A class is a decision that has to be made. All the observations combined with their class labels are known as a data set. When a new observation is received, that observation is classified based on previous experience.[113]
A classifier can be trained in various ways; there are many statistical and machine learning approaches.
The decision tree is the simplest and most widely used symbolic machine learning algorithm.[114]
K-nearest neighbor algorithm was the most widely used analogical AI until the mid-1990s.[115]
Kernel methods such as the support vector machine (SVM) displaced k-nearest neighbor in the 1990s.[116]
The naive Bayes classifier is reportedly the «most widely used learner»[117] at Google, due in part to its scalability.[118]
Neural networks are also used for classification.[119]
Classifier performance depends greatly on the characteristics of the data to be classified, such as the dataset size, distribution of samples across classes, dimensionality, and the level of noise. Model-based classifiers perform well if the assumed model is an extremely good fit for the actual data. Otherwise, if no matching model is available, and if accuracy (rather than speed or scalability) is the sole concern, conventional wisdom is that discriminative classifiers (especially SVM) tend to be more accurate than model-based classifiers such as «naive Bayes» on most practical data sets.[120]
Artificial neural networks
A neural network is an interconnected group of nodes, akin to the vast network of neurons in the human brain.
Neural networks[119]
were inspired by the architecture of neurons in the human brain. A simple «neuron» N accepts input from other neurons, each of which, when activated (or «fired»), casts a weighted «vote» for or against whether neuron N should itself activate. Learning requires an algorithm to adjust these weights based on the training data; one simple algorithm (dubbed «fire together, wire together») is to increase the weight between two connected neurons when the activation of one triggers the successful activation of another. Neurons have a continuous spectrum of activation; in addition, neurons can process inputs in a nonlinear way rather than weighing straightforward votes.
Modern neural networks model complex relationships between inputs and outputs and find patterns in data. They can learn continuous functions and even digital logical operations. Neural networks can be viewed as a type of mathematical optimization – they perform gradient descent on a multi-dimensional topology that was created by training the network. The most common training technique is the backpropagation algorithm.[121]
Other learning techniques for neural networks are Hebbian learning («fire together, wire together»), GMDH or competitive learning.[122]
The main categories of networks are acyclic or feedforward neural networks (where the signal passes in only one direction) and recurrent neural networks (which allow feedback and short-term memories of previous input events). Among the most popular feedforward networks are perceptrons, multi-layer perceptrons and radial basis networks.[123]
Deep learning
Representing images on multiple layers of abstraction in deep learning[124]
Deep learning[125]
uses several layers of neurons between the network’s inputs and outputs. The multiple layers can progressively extract higher-level features from the raw input. For example, in image processing, lower layers may identify edges, while higher layers may identify the concepts relevant to a human such as digits or letters or faces.[126] Deep learning has drastically improved the performance of programs in many important subfields of artificial intelligence, including computer vision, speech recognition, image classification[127] and others.
Deep learning often uses convolutional neural networks for many or all of its layers. In a convolutional layer, each neuron receives input from only a restricted area of the previous layer called the neuron’s receptive field. This can substantially reduce the number of weighted connections between neurons,[128] and creates a hierarchy similar to the organization of the animal visual cortex.[129]
In a recurrent neural network (RNN) the signal will propagate through a layer more than once;[130]
thus, an RNN is an example of deep learning.[131]
RNNs can be trained by gradient descent,[132]
however long-term gradients which are back-propagated can «vanish» (that is, they can tend to zero) or «explode» (that is, they can tend to infinity), known as the vanishing gradient problem.[133]
The long short term memory (LSTM) technique can prevent this in most cases.[134]
Specialized languages and hardware
Specialized languages for artificial intelligence have been developed, such as Lisp, Prolog, TensorFlow and many others. Hardware developed for AI includes AI accelerators and neuromorphic computing.
Applications
For this project the AI had to learn the typical patterns in the colors and brushstrokes of Renaissance painter Raphael. The portrait shows the face of the actress Ornella Muti, «painted» by AI in the style of Raphael.
AI is relevant to any intellectual task.[135]
Modern artificial intelligence techniques are pervasive and are too numerous to list here.[136]
Frequently, when a technique reaches mainstream use, it is no longer considered artificial intelligence; this phenomenon is described as the AI effect.[137]
In the 2010s, AI applications were at the heart of the most commercially successful areas of computing, and have become a ubiquitous feature of daily life. AI is used in search engines (such as Google Search),
targeting online advertisements,[138] recommendation systems (offered by Netflix, YouTube or Amazon),
driving internet traffic,[139][140] targeted advertising (AdSense, Facebook),
virtual assistants (such as Siri or Alexa),[141] autonomous vehicles (including drones and self-driving cars),
automatic language translation (Microsoft Translator, Google Translate),
facial recognition (Apple’s Face ID or Microsoft’s DeepFace),
image labeling (used by Facebook, Apple’s iPhoto and TikTok)
and spam filtering.
There are also thousands of successful AI applications used to solve problems for specific industries or institutions. A few examples are energy storage,[142] deepfakes,[143] medical diagnosis, military logistics, or supply chain management.
Game playing has been a test of AI’s strength since the 1950s. Deep Blue became the first computer chess-playing system to beat a reigning world chess champion, Garry Kasparov, on 11 May 1997.[144] In 2011, in a Jeopardy! quiz show exhibition match, IBM’s question answering system, Watson, defeated the two greatest Jeopardy! champions, Brad Rutter and Ken Jennings, by a significant margin.[145]
In March 2016, AlphaGo won 4 out of 5 games of Go in a match with Go champion Lee Sedol, becoming the first computer Go-playing system to beat a professional Go player without handicaps.[146] Other programs handle imperfect-information games; such as for poker at a superhuman level, Pluribus[o] and Cepheus.[148] DeepMind in the 2010s developed a «generalized artificial intelligence» that could learn many diverse Atari games on its own.[149]
By 2020, Natural Language Processing systems such as the enormous GPT-3 (then by far the largest artificial neural network) were matching human performance on pre-existing benchmarks, albeit without the system attaining a commonsense understanding of the contents of the benchmarks.[150]
DeepMind’s AlphaFold 2 (2020) demonstrated the ability to approximate, in hours rather than months, the 3D structure of a protein.[151]
Other applications predict the result of judicial decisions,[152] create art (such as poetry or painting) and prove mathematical theorems.
Smart traffic lights
Smart traffic lights have been developed at Carnegie Mellon since 2009. Professor Stephen Smith has started a company since then Surtrac that has installed smart traffic control systems in 22 cities. It costs about $20,000 per intersection to install. Drive time has been reduced by 25% and traffic jam waiting time has been reduced by 40% at the intersections it has been installed.[153]
Intellectual Property
AI Patent families for functional application categories and sub categories. Computer vision represents 49 percent of patent families related to a functional application in 2016.
In 2019, WIPO reported that AI was the most prolific emerging technology in terms of number of patent applications and granted patents, the Internet of things was estimated to be the largest in terms of market size. It was followed, again in market size, by big data technologies, robotics, AI, 3D printing and the fifth generation of mobile services (5G).[154] Since AI emerged in the 1950s, 340,000 AI-related patent applications were filed by innovators and 1.6 million scientific papers have been published by researchers, with the majority of all AI-related patent filings published since 2013. Companies represent 26 out of the top 30 AI patent applicants, with universities or public research organizations accounting for the remaining four.[155] The ratio of scientific papers to inventions has significantly decreased from 8:1 in 2010 to 3:1 in 2016, which is attributed to be indicative of a shift from theoretical research to the use of AI technologies in commercial products and services. Machine learning is the dominant AI technique disclosed in patents and is included in more than one-third of all identified inventions (134,777 machine learning patents filed for a total of 167,038 AI patents filed in 2016), with computer vision being the most popular functional application. AI-related patents not only disclose AI techniques and applications, they often also refer to an application field or industry. Twenty application fields were identified in 2016 and included, in order of magnitude: telecommunications (15 percent), transportation (15 percent), life and medical sciences (12 percent), and personal devices, computing and human–computer interaction (11 percent). Other sectors included banking, entertainment, security, industry and manufacturing, agriculture, and networks (including social networks, smart cities and the Internet of things). IBM has the largest portfolio of AI patents with 8,290 patent applications, followed by Microsoft with 5,930 patent applications.[155]
Philosophy
Defining artificial intelligence
Alan Turing wrote in 1950 «I propose to consider the question ‘can machines think’?»[156]
He advised changing the question from whether a machine «thinks», to «whether or not it is possible for machinery to show intelligent behaviour».[156]
He devised the Turing test, which measures the ability of a machine to simulate human conversation.[157] Since we can only observe the behavior of the machine, it does not matter if it is «actually» thinking or literally has a «mind». Turing notes that we can not determine these things about other people[p] but «it is usual to have a polite convention that everyone thinks»[158]
Russell and Norvig agree with Turing that AI must be defined in terms of «acting» and not «thinking».[159] However, they are critical that the test compares machines to people. «Aeronautical engineering texts,» they wrote, «do not define the goal of their field as making ‘machines that fly so exactly like pigeons that they can fool other pigeons.‘«[160] AI founder John McCarthy agreed, writing that «Artificial intelligence is not, by definition, simulation of human intelligence».[161]
McCarthy defines intelligence as «the computational part of the ability to achieve goals in the world.»[162] Another AI founder, Marvin Minsky similarly defines it as «the ability to solve hard problems».[163] These definitions view intelligence in terms of well-defined problems with well-defined solutions, where both the difficulty of the problem and the performance of the program are direct measures of the «intelligence» of the machine — and no other philosophical discussion is required, or may not even be possible.
A definition that has also been adopted by Google[164][better source needed] — major practitionary in the field of AI.
This definition stipulated the ability of systems to synthesize information as the manifestation of intelligence, similar to the way it is defined in biological intelligence.
Evaluating approaches to AI
No established unifying theory or paradigm has guided AI research for most of its history.[q] The unprecedented success of statistical machine learning in the 2010s eclipsed all other approaches (so much so that some sources, especially in the business world, use the term «artificial intelligence» to mean «machine learning with neural networks»). This approach is mostly sub-symbolic, neat, soft and narrow (see below). Critics argue that these questions may have to be revisited by future generations of AI researchers.
Symbolic AI and its limits
Symbolic AI (or «GOFAI»)[166] simulated the high-level conscious reasoning that people use when they solve puzzles, express legal reasoning and do mathematics. They were highly successful at «intelligent» tasks such as algebra or IQ tests. In the 1960s, Newell and Simon proposed the physical symbol systems hypothesis: «A physical symbol system has the necessary and sufficient means of general intelligent action.»[167]
However, the symbolic approach failed on many tasks that humans solve easily, such as learning, recognizing an object or commonsense reasoning. Moravec’s paradox is the discovery that high-level «intelligent» tasks were easy for AI, but low level «instinctive» tasks were extremely difficult.[168]
Philosopher Hubert Dreyfus had argued since the 1960s that human expertise depends on unconscious instinct rather than conscious symbol manipulation, and on having a «feel» for the situation, rather than explicit symbolic knowledge.[169]
Although his arguments had been ridiculed and ignored when they were first presented, eventually, AI research came to agree.[r][48]
The issue is not resolved: sub-symbolic reasoning can make many of the same inscrutable mistakes that human intuition does, such as algorithmic bias. Critics such as Noam Chomsky argue continuing research into symbolic AI will still be necessary to attain general intelligence,[171][172] in part because sub-symbolic AI is a move away from explainable AI: it can be difficult or impossible to understand why a modern statistical AI program made a particular decision. The emerging field of neurosymbolic artificial intelligence attempts to bridge the two approaches.
Neat vs. scruffy
«Neats» hope that intelligent behavior is described using simple, elegant principles (such as logic, optimization, or neural networks). «Scruffies» expect that it necessarily requires solving a large number of unrelated problems (especially in areas like common sense reasoning). This issue was actively discussed in the 70s and 80s,[173]
but in the 1990s mathematical methods and solid scientific standards became the norm, a transition that Russell and Norvig termed «the victory of the neats».[174]
Soft vs. hard computing
Finding a provably correct or optimal solution is intractable for many important problems.[47] Soft computing is a set of techniques, including genetic algorithms, fuzzy logic and neural networks, that are tolerant of imprecision, uncertainty, partial truth and approximation. Soft computing was introduced in the late 80s and most successful AI programs in the 21st century are examples of soft computing with neural networks.
Narrow vs. general AI
AI researchers are divided as to whether to pursue the goals of artificial general intelligence and superintelligence (general AI) directly or to solve as many specific problems as possible (narrow AI) in hopes these solutions will lead indirectly to the field’s long-term goals.[175][176]
General intelligence is difficult to define and difficult to measure, and modern AI has had more verifiable successes by focusing on specific problems with specific solutions. The experimental sub-field of artificial general intelligence studies this area exclusively.
Machine consciousness, sentience and mind
The philosophy of mind does not know whether a machine can have a mind, consciousness and mental states, in the same sense that human beings do. This issue considers the internal experiences of the machine, rather than its external behavior. Mainstream AI research considers this issue irrelevant because it does not affect the goals of the field. Stuart Russell and Peter Norvig observe that most AI researchers «don’t care about the [philosophy of AI] – as long as the program works, they don’t care whether you call it a simulation of intelligence or real intelligence.»[177] However, the question has become central to the philosophy of mind. It is also typically the central question at issue in artificial intelligence in fiction.
Consciousness
David Chalmers identified two problems in understanding the mind, which he named the «hard» and «easy» problems of consciousness.[178] The easy problem is understanding how the brain processes signals, makes plans and controls behavior. The hard problem is explaining how this feels or why it should feel like anything at all. Human information processing is easy to explain, however, human subjective experience is difficult to explain. For example, it is easy to imagine a color-blind person who has learned to identify which objects in their field of view are red, but it is not clear what would be required for the person to know what red looks like.[179]
Computationalism and functionalism
Computationalism is the position in the philosophy of mind that the human mind is an information processing system and that thinking is a form of computing. Computationalism argues that the relationship between mind and body is similar or identical to the relationship between software and hardware and thus may be a solution to the mind-body problem. This philosophical position was inspired by the work of AI researchers and cognitive scientists in the 1960s and was originally proposed by philosophers Jerry Fodor and Hilary Putnam.[180]
Philosopher John Searle characterized this position as «strong AI»: «The appropriately programmed computer with the right inputs and outputs would thereby have a mind in exactly the same sense human beings have minds.»[s]
Searle counters this assertion with his Chinese room argument, which attempts to show that, even if a machine perfectly simulates human behavior, there is still no reason to suppose it also has a mind.[183]
Robot rights
If a machine has a mind and subjective experience, then it may also have sentience (the ability to feel), and if so, then it could also suffer, and thus it would be entitled to certain rights.[184]
Any hypothetical robot rights would lie on a spectrum with animal rights and human rights.[185]
This issue has been considered in fiction for centuries,[186]
and is now being considered by, for example, California’s Institute for the Future; however, critics argue that the discussion is premature.[187]
Future
Superintelligence
A superintelligence, hyperintelligence, or superhuman intelligence, is a hypothetical agent that would possess intelligence far surpassing that of the brightest and most gifted human mind. Superintelligence may also refer to the form or degree of intelligence possessed by such an agent.[176]
If research into artificial general intelligence produced sufficiently intelligent software, it might be able to reprogram and improve itself. The improved software would be even better at improving itself, leading to recursive self-improvement.[188]
Its intelligence would increase exponentially in an intelligence explosion and could dramatically surpass humans. Science fiction writer Vernor Vinge named this scenario the «singularity».[189]
Because it is difficult or impossible to know the limits of intelligence or the capabilities of superintelligent machines, the technological singularity is an occurrence beyond which events are unpredictable or even unfathomable.[190]
Robot designer Hans Moravec, cyberneticist Kevin Warwick, and inventor Ray Kurzweil have predicted that humans and machines will merge in the future into cyborgs that are more capable and powerful than either. This idea, called transhumanism, has roots in Aldous Huxley and Robert Ettinger.[191]
Edward Fredkin argues that «artificial intelligence is the next stage in evolution», an idea first proposed by Samuel Butler’s «Darwin among the Machines» as far back as 1863, and expanded upon by George Dyson in his book of the same name in 1998.[192]
Risks
Technological unemployment
In the past, technology has tended to increase rather than reduce total employment, but economists acknowledge that «we’re in uncharted territory» with AI.[193]
A survey of economists showed disagreement about whether the increasing use of robots and AI will cause a substantial increase in long-term unemployment, but they generally agree that it could be a net benefit if productivity gains are redistributed.[194]
Subjective estimates of the risk vary widely; for example, Michael Osborne and Carl Benedikt Frey estimate 47% of U.S. jobs are at «high risk» of potential automation, while an OECD report classifies only 9% of U.S. jobs as «high risk».[t][196]
Unlike previous waves of automation, many middle-class jobs may be eliminated by artificial intelligence; The Economist states that «the worry that AI could do to white-collar jobs what steam power did to blue-collar ones during the Industrial Revolution» is «worth taking seriously».[197]
Jobs at extreme risk range from paralegals to fast food cooks, while job demand is likely to increase for care-related professions ranging from personal healthcare to the clergy.[198]
Bad actors and weaponized AI
AI provides a number of tools that are particularly useful for authoritarian governments: smart spyware, face recognition and voice recognition allow widespread surveillance; such surveillance allows machine learning to classify potential enemies of the state and can prevent them from hiding; recommendation systems can precisely target propaganda and misinformation for maximum effect; deepfakes aid in producing misinformation; advanced AI can make centralized decision making more competitive with liberal and decentralized systems such as markets.[199]
Terrorists, criminals and rogue states may use other forms of weaponized AI such as advanced digital warfare and lethal autonomous weapons. By 2015, over fifty countries were reported to be researching battlefield robots.[200]
Machine-learning AI is also able to design tens of thousands of toxic molecules in a matter of hours.[201]
Algorithmic bias
AI programs can become biased after learning from real-world data. It is not typically introduced by the system designers but is learned by the program, and thus the programmers are often unaware that the bias exists.[202]
Bias can be inadvertently introduced by the way training data is selected.[203]
It can also emerge from correlations: AI is used to classify individuals into groups and then make predictions assuming that the individual will resemble other members of the group. In some cases, this assumption may be unfair.[204]
An example of this is COMPAS, a commercial program widely used by U.S. courts to assess the likelihood of a defendant becoming a recidivist. ProPublica claims that the COMPAS-assigned recidivism risk level of black defendants is far more likely to be overestimated than that of white defendants, despite the fact that the program was not told the races of the defendants.[205] Other examples where algorithmic bias can lead to unfair outcomes are when AI is used for credit rating or hiring.
At its 2022 Conference on Fairness, Accountability, and Transparency (ACM FAccT 2022) the Association for Computing Machinery, in Seoul, South Korea, presented and published findings recommending that until AI and robotics systems are demonstrated to be free of bias mistakes, they are unsafe and the use of self-learning neural networks trained on vast, unregulated sources of flawed internet data should be curtailed.[206]
Existential risk
Superintelligent AI may be able to improve itself to the point that humans could not control it. This could, as physicist Stephen Hawking puts it, «spell the end of the human race».[207] Philosopher Nick Bostrom argues that sufficiently intelligent AI, if it chooses actions based on achieving some goal, will exhibit convergent behavior such as acquiring resources or protecting itself from being shut down. If this AI’s goals do not fully reflect humanity’s, it might need to harm humanity to acquire more resources or prevent itself from being shut down, ultimately to better achieve its goal. He concludes that AI poses a risk to mankind, however humble or «friendly» its stated goals might be.[208]
Political scientist Charles T. Rubin argues that «any sufficiently advanced benevolence may be indistinguishable from malevolence.» Humans should not assume machines or robots would treat us favorably because there is no a priori reason to believe that they would share our system of morality.[209]
The opinion of experts and industry insiders is mixed, with sizable fractions both concerned and unconcerned by risk from eventual superhumanly-capable AI.[210]
Stephen Hawking, Microsoft founder Bill Gates, history professor Yuval Noah Harari, and SpaceX founder Elon Musk have all expressed serious misgivings about the future of AI.[211]
Prominent tech titans including Peter Thiel (Amazon Web Services) and Musk have committed more than $1 billion to nonprofit companies that champion responsible AI development, such as OpenAI and the Future of Life Institute.[212]
Mark Zuckerberg (CEO, Facebook) has said that artificial intelligence is helpful in its current form and will continue to assist humans.[213]
Other experts argue is that the risks are far enough in the future to not be worth researching,
or that humans will be valuable from the perspective of a superintelligent machine.[214]
Rodney Brooks, in particular, has said that «malevolent» AI is still centuries away.[u]
Copyright
AI’s decisions making abilities raises the questions of legal responsibility and copyright status of created works. This issues are being refined in various jurisdictions.[216]
Ethical machines
Friendly AI are machines that have been designed from the beginning to minimize risks and to make choices that benefit humans. Eliezer Yudkowsky, who coined the term, argues that developing friendly AI should be a higher research priority: it may require a large investment and it must be completed before AI becomes an existential risk.[217]
Machines with intelligence have the potential to use their intelligence to make ethical decisions. The field of machine ethics provides machines with ethical principles and procedures for resolving ethical dilemmas.[218]
Machine ethics is also called machine morality, computational ethics or computational morality,[218]
and was founded at an AAAI symposium in 2005.[219]
Other approaches include Wendell Wallach’s «artificial moral agents»[220]
and Stuart J. Russell’s three principles for developing provably beneficial machines.[221]
Regulation
The regulation of artificial intelligence is the development of public sector policies and laws for promoting and regulating artificial intelligence (AI); it is therefore related to the broader regulation of algorithms.[222]
The regulatory and policy landscape for AI is an emerging issue in jurisdictions globally.[223]
Between 2016 and 2020, more than 30 countries adopted dedicated strategies for AI.[44]
Most EU member states had released national AI strategies, as had Canada, China, India, Japan, Mauritius, the Russian Federation, Saudi Arabia, United Arab Emirates, US and Vietnam. Others were in the process of elaborating their own AI strategy, including Bangladesh, Malaysia and Tunisia.[44]
The Global Partnership on Artificial Intelligence was launched in June 2020, stating a need for AI to be developed in accordance with human rights and democratic values, to ensure public confidence and trust in the technology.[44] Henry Kissinger, Eric Schmidt, and Daniel Huttenlocher published a joint statement in November 2021 calling for a government commission to regulate AI.[224]
In fiction
The word «robot» itself was coined by Karel Čapek in his 1921 play R.U.R., the title standing for «Rossum’s Universal Robots».
Thought-capable artificial beings have appeared as storytelling devices since antiquity,[15]
and have been a persistent theme in science fiction.[17]
A common trope in these works began with Mary Shelley’s Frankenstein, where a human creation becomes a threat to its masters. This includes such works as Arthur C. Clarke’s and Stanley Kubrick’s 2001: A Space Odyssey (both 1968), with HAL 9000, the murderous computer in charge of the Discovery One spaceship, as well as The Terminator (1984) and The Matrix (1999). In contrast, the rare loyal robots such as Gort from The Day the Earth Stood Still (1951) and Bishop from Aliens (1986) are less prominent in popular culture.[225]
Isaac Asimov introduced the Three Laws of Robotics in many books and stories, most notably the «Multivac» series about a super-intelligent computer of the same name. Asimov’s laws are often brought up during lay discussions of machine ethics;[226]
while almost all artificial intelligence researchers are familiar with Asimov’s laws through popular culture, they generally consider the laws useless for many reasons, one of which is their ambiguity.[227]
Transhumanism (the merging of humans and machines) is explored in the manga Ghost in the Shell and the science-fiction series Dune.
Several works use AI to force us to confront the fundamental question of what makes us human, showing us artificial beings that have the ability to feel, and thus to suffer. This appears in Karel Čapek’s R.U.R., the films A.I. Artificial Intelligence and Ex Machina, as well as the novel Do Androids Dream of Electric Sheep?, by Philip K. Dick. Dick considers the idea that our understanding of human subjectivity is altered by technology created with artificial intelligence.[228]
Scientific diplomacy
[relevant?]
Warfare
As technology and research evolve and the world enters the third revolution of warfare following gunpowder and nuclear weapons, the artificial intelligence arms race ensues between the United States, China, and Russia, three countries with the world’s top five highest military budgets.[229] Intentions of being a world leader in AI research by 2030[230] have been declared by China’s leader Xi Jinping, and President Putin of Russia has stated that «Whoever becomes the leader in this sphere will become the ruler of the world».[231] If Russia were to become the leader in AI research, President Putin has stated Russia’s intent to share some of their research with the world so as to not monopolize the field,[231] similar to their current sharing of nuclear technologies, maintaining science diplomacy relations. The United States, China, and Russia, are some examples of countries that have taken their stances toward military artificial intelligence since as early as 2014, having established military programs to develop cyber weapons, control lethal autonomous weapons, and drones that can be used for surveillance.
Russo-Ukrainian War
President Putin announced that artificial intelligence is the future for all mankind [231] and recognizes the power and opportunities that the development and deployment of lethal autonomous weapons AI technology can hold in warfare and homeland security, as well as its threats. President Putin’s prediction that future wars will be fought using AI has started to come to fruition to an extent after Russia invaded Ukraine on 24 February 2022. The Ukrainian military is making use of the Turkish Bayraktar TB2-drones[232] that still require human operation to deploy laser-guided bombs but can take off, land, and cruise autonomously. Ukraine has also been using Switchblade drones supplied by the US and receiving information gathering by the United States’s own surveillance operations regarding battlefield intelligence and national security about Russia.[233] Similarly, Russia can use AI to help analyze battlefield data from surveillance footage taken by drones. Reports and images show that Russia’s military has deployed KUB- BLA suicide drones [234] into Ukraine, with speculations of intentions to assassinate Ukrainian President Volodymyr Zelenskyy.
Warfare regulations
As research in the AI realm progresses, there is pushback about the use of AI from the Campaign to Stop Killer Robots and world technology leaders have sent a petition[235] to the United Nations calling for new regulations on the development and use of AI technologies in 2017, including a ban on the use of lethal autonomous weapons due to ethical concerns for innocent civilian populations.
Cybersecurity
With the ever evolving cyber-attacks and generation of devices, AI can be used for threat detection and more effective response by risk prioritization. With this tool, some challenges are also presented such as privacy, informed consent, and responsible use.[236] According to CISA, the cyberspace is difficult to secure for the following factors: the ability of malicious actors to operate from anywhere in the world, the linkages between cyberspace and physical systems, and the difficulty of reducing vulnerabilities and consequences in complex cyber networks.[237] With the increased technological advances of the world, the risk for wide scale consequential events rises. Paradoxically, the ability to protect information and create a line of communication between the scientific and diplomatic community thrives. The role of cybersecurity in diplomacy has become increasingly relevant, creating the term of cyber diplomacy – which is not uniformly defined and not synonymous with cyber defence.[238] Many nations have developed unique approaches to scientific diplomacy in cyberspace.
Czech Republic’s approach
Dating back to 2011, when the Czech National Security Authority (NSA) was appointed as the national authority for the cyber agenda. The role of cyber diplomacy strengthened in 2017 when the Czech Ministry of Foreign Affairs (MFA) detected a serious cyber campaign directed against its own computer networks.[239] In 2016, three cyber diplomats were deployed to Washington, D.C., Brussels and Tel Aviv, with the goal of establishing active international cooperation focused on engagement with the EU and NATO. The main agenda for these scientific diplomacy efforts is to bolster research on artificial intelligence and how it can be used in cybersecurity research, development, and overall consumer trust.[240] CzechInvest is a key stakeholder in scientific diplomacy and cybersecurity. For example, in September 2018, they organized a mission to Canada in September 2018 with a special focus on artificial intelligence. The main goal of this particular mission was a promotional effort on behalf of Prague, attempting to establish it as a future knowledge hub for the industry for interested Canadian firms.[241]
Germany’s approach
Cybersecurity is recognized as a governmental task, dividing into three ministries of responsibility: the Federal Ministry of the Interior, the Federal Ministry of Defence, and the Federal Foreign Office.[242] These distinctions promoted the creation of various institutions, such as The German National Office for Information Security, The National Cyberdefence Centre, The German National Cyber Security Council, and The Cyber and Information Domain Service.[240] In 2018, a new strategy for artificial intelligence was established by the German government, with the creation of a German-French virtual research and innovation network,[243] holding opportunity for research expansion into cybersecurity.
European Union’s approach
The adoption of The Cybersecurity Strategy of the European Union – An Open, Safe and Secure Cyberspace document in 2013 by the European commission[240] pushed forth cybersecurity efforts integrated with scientific diplomacy and artificial intelligence. Efforts are strong, as the EU funds various programs and institutions in the effort to bring science to diplomacy and bring diplomacy to science. Some examples are the cyber security programme Competence Research Innovation (CONCORDIA), which brings together 14 member states,[244] and Cybersecurity for Europe (CSE), which brings together 43 partners involving 20 member states.[245] In addition, The European Network of Cybersecurity Centres and Competence Hub for Innovation and Operations (ECHO) gathers 30 partners with 15 member states[246] and SPARTA gathers 44 partners involving 14 member states.[247] These efforts reflect the overall goals of the EU, to innovate cybersecurity for defense and protection, establish a highly integrated cyberspace among many nations, and further contribute to the security of artificial intelligence.[240]
Russo-Ukrainian War
With the 2022 invasion of Ukraine, there has been a rise in malicious cyber activity against the United States,[248] Ukraine, and Russia. A prominent and rare documented use of artificial intelligence in conflict is on behalf of Ukraine, using facial recognition software to uncover Russian assailants and identify Ukrainians killed in the ongoing war.[249] Though these governmental figures are not primarily focused on scientific and cyber diplomacy, other institutions are commenting on the use of artificial intelligence in cybersecurity with that focus. For example, Georgetown University’s Center for Security and Emerging Technology (CSET) has the Cyber-AI Project, with one goal being to attract policymakers’ attention to the growing body of academic research, which exposes the exploitive consequences of AI and machine-learning (ML) algorithms.[250] This vulnerability can be a plausible explanation as to why Russia is not engaging in the use of AI in conflict per, Andrew Lohn, a senior fellow at CSET. In addition to use on the battlefield, AI is being used by the Pentagon to analyze data from the war, analyzing to strengthen cybersecurity and warfare intelligence for the United States.[233][251]
Election security
As artificial intelligence grows and the overwhelming amount of news portrayed through cyberspace expands, it is becoming extremely overwhelming for a voter to know what to believe. There are many intelligent codes, referred to as bots, written to portray people on social media with the goal of spreading misinformation.[252] The 2016 US election is a victim of such actions. During the Hillary Clinton and Donald Trump campaign, artificial intelligent bots from Russia were spreading misinformation about the candidates in order to help the Trump campaign.[253] Analysts concluded that approximately 19% of Twitter tweets centered around the 2016 election were detected to come from bots.[253] YouTube in recent years has been used to spread political information as well. Although there is no proof that the platform attempts to manipulate its viewers opinions, Youtubes AI algorithm recommends videos of similar variety.[254] If a person begins to research right wing political podcasts, then YouTube’s algorithm will recommend more right wing videos.[255] The uprising in a program called Deepfake, a software used to replicate someone’s face and words, has also shown its potential threat. In 2018 a Deepfake video of Barack Obama was released saying words he claims to have never said.[256] While in a national election a Deepfake will quickly be debunked, the software has the capability to heavily sway a smaller local election. This tool holds a lot of potential for spreading misinformation and is monitored with great attention.[257] Although it may be seen as a tool used for harm, AI can help enhance election campaigns as well. AI bots can be programed to target articles with known misinformation. The bots can then indicate what is being misinformed to help shine light on the truth. AI can also be used to inform a person where each parts stands on a certain topic such as healthcare or climate change.[258] The political leaders of a nation have heavy sway on international affairs. Thus, a political leader with a lack of interest for international collaborative scientific advancement can have a negative impact in the scientific diplomacy of that nation[259]
Future of work
Facial recognition
The use of artificial intelligence (AI) has subtly grown to become part of everyday life. It is used every day in facial recognition software. It is the first measure of security for many companies in the form of a biometric authentication. This means of authentication allows even the most official organizations such as the United States Internal Revenue Service to verify a person’s identity [260] via a database generated from machine learning. As of the year 2022, the United States IRS requires those who do not undergo a live interview with an agent to complete a biometric verification of their identity via ID.me’s facial recognition tool.[260]
AI and school
In Japan and South Korea, artificial intelligence software is used in the instruction of English language via the company Riiid.[261] Riiid is a Korean education company working alongside Japan to give students the means to learn and use their English communication skills via engaging with artificial intelligence in a live chat.[261] Riid is not the only company to do this. American company Duolingo is well known for their automated teaching of 41 languages. Babbel, a German language learning program, also uses artificial intelligence in its teaching automation, allowing for European students to learn vital communication skills needed in social, economic, and diplomatic settings. Artificial intelligence will also automate the routine tasks that teachers need to do such as grading, taking attendance, and handling routine student inquiries.[262] This enables the teacher to carry on with the complexities of teaching that an automated machine cannot handle. These include creating exams, explaining complex material in a way that will benefit students individually and handling unique questions from students.
AI and medicine
Unlike the human brain, which possess generalized intelligence, the specialized intelligence of AI can serve as a means of support to physicians internationally. The medical field has a diverse and profound amount of data in which AI can employ to generate a predictive diagnosis. Researchers at an Oxford hospital have developed artificial intelligence that can diagnose heart scans for heart disease and cancer.[263] This artificial intelligence can pick up diminutive details in the scans that doctors may miss. As such, artificial intelligence in medicine will better the industry, giving doctors the means to precisely diagnose their patients using the tools available. The artificial intelligence algorithms will also be used to further improve diagnosis over time, via an application of machine learning called precision medicine.[264] Furthermore, the narrow application of artificial intelligence can use «deep learning» in order to improve medical image analysis. In radiology imaging, AI uses deep learning algorithms to identify potentially cancerous lesions which is an important process assisting in early diagnosis.[265]
AI in business
Data analysis is a fundamental property of artificial intelligence that enables it to be used in every facet of life from search results to the way people buy product. According to NewVantage Partners,[266] over 90% of top businesses have ongoing investments in artificial intelligence. According to IBM, one of the world’s leaders in technology, 45% of respondents from companies with over 1,000 employees have adopted AI.[267] Recent data shows that the business market [268] for artificial intelligence during the year 2020 was valued at $51.08 billion. The business market for artificial intelligence is projected to be over $640.3 billion by the year 2028.[268] To prevent harm, AI-deploying organizations need to play a central role in creating and deploying trustworthy AI in line with the principles of trustworthy AI,[269] and take accountability to mitigate the risks.[270]
Business and diplomacy
With the exponential surge of artificial technology and communication, the distribution of one’s ideals and values has been evident in daily life. Digital information is spread via communication apps such as Whatsapp, Facebook/Meta, Snapchat, Instagram and Twitter. However, it is known that these sites relay specific information corresponding to data analysis. If a right-winged individual were to do a google search, Google’s algorithms would target that individual and relay data pertinent to that target audience. US President Bill Clinton noted in 2000:»In the new century, liberty will spread by cell phone and cable modem. […] We know how much the Internet has changed America, and we are already an open society.[271] However, when the private sector uses artificial intelligence to gather data, a shift in power from the state to the private sector may be seen. This shift in power, specifically in large technological corporations, could profoundly change how diplomacy functions in society. The rise in digital technology and usage of artificial technology enabled the private sector to gather immense data on the public, which is then further categorized by race, location, age, gender, etc.[272] The New York Times calculates that «the ten largest tech firms, which have become gatekeepers in commerce, finance, entertainment and communications, now have a combined market capitalization of more than $10 trillion. In gross domestic product terms, that would rank them as the world’s third-largest economy.»[273] Beyond the general lobbying of congressmen/congresswomen, companies such as Facebook/Meta or Google use collected data in order to reach their intended audiences with targeted information.[273]
AI and foreign policy
[relevant?]
Multiple nations around the globe employ artificial intelligence to assist with their foreign policy decisions. The Chinese Department of External Security Affairs – under the Ministry of Foreign Affairs – uses AI to review almost all its foreign investment projects for risk mitigation.[274] The government of China plans to use artificial intelligence in its $900 billion global infrastructure development plan, called the «Belt and Road Initiative» for political, economic, and environmental risk alleviation.[275]
Over 200 applications of artificial intelligence are being used by over 46 United Nations agencies, in sectors ranging from health care dealing with issues such as combating COVID-19 to smart agriculture, to assist the UN in political and diplomatic relations.[276] One example is the use of AI by the UN Global Pulse program to model the effect of the spread of COVID-19 on internally displaced people (IDP) and refugee settlements to assist them in creating an appropriate global health policy.[277][278]
Novel AI tools such as remote sensing can also be employed by diplomats for collecting and analyzing data and near-real-time tracking of objects such as troop or refugee movements along borders in violent conflict zones.[277][279]
Artificial intelligence can be used to mitigate vital cross-national diplomatic talks to prevent translation errors caused by human translators.[280] A major example is the 2021 Anchorage meetings held between US and China aimed at stabilizing foreign relations, only for it to have the opposite effect, increasing tension and aggressiveness between the two nations, due to translation errors caused by human translators.[281] In the meeting, when United States National Security Advisor to President Joe Biden, Jacob Jeremiah Sullivan stated, «We do not seek conflict, but we welcome stiff competition and we will always stand up for our principles, for our people, and for our friends», it was mistranslated into Chinese as «we will face competition between us, and will present our stance in a very clear manner», adding an aggressive tone to the speech.[281] AI’s ability for fast and efficient natural language processing and real-time translation and transliteration makes it an important tool for foreign-policy communication between nations and prevents unintended mistranslation.[282]
See also
- A.I. Rising
- AI alignment – Issue of ensuring beneficial AI
- Artificial intelligence arms race – Arms race for the most advanced AI-related technologies
- Artificial philosophy
- Behavior selection algorithm – Algorithm that selects actions for intelligent agents
- Business process automation
- Case-based reasoning – Process of solving new problems based on the solutions of similar past problems
- Emergent algorithm
- Female gendering of AI technologies – Design of digital assistants as female
- Glossary of artificial intelligence – List of definitions of terms and concepts commonly used in the study of artificial intelligence
- Robotic process automation – Form of business process automation technology
- Synthetic intelligence – Alternate term for or form of artificial intelligence
- Universal basic income – Welfare system of unconditional income
- Weak artificial intelligence – Form of artificial intelligence
- Operations research – Discipline concerning the application of advanced analytical methods
Explanatory notes
- ^ a b This list of intelligent traits is based on the topics covered by the major AI textbooks, including: Russell & Norvig (2003), Luger & Stubblefield (2004), Poole, Mackworth & Goebel (1998) and Nilsson (1998)
- ^ This statement comes from the proposal for the Dartmouth workshop of 1956, which reads: «Every aspect of learning or any other feature of intelligence can be so precisely described that a machine can be made to simulate it.»[13]
- ^ Russel and Norvig note in the textbook Artificial Intelligence: A Modern Approach (4th ed.), section 1.5:
«In the longer term, we face the difficult problem of controlling superintelligent AI systems that may evolve in unpredictable ways.» while referring to computer scientists, philosophers, and technologists. - ^
Daniel Crevier wrote «the conference is generally recognized as the official birthdate of the new science.»[23] Russell and Norvifg call the conference «the birth of artificial intelligence.»[24] - ^
Russell and Norvig wrote «for the next 20 years the field would be dominated by these people and their students.»[24] - ^
Russell and Norvig wrote «it was astonishing whenever a computer did anything kind of smartish».[26] - ^
The programs described are Arthur Samuel’s checkers program for the IBM 701, Daniel Bobrow’s STUDENT, Newell and Simon’s Logic Theorist and Terry Winograd’s SHRDLU. - ^
Embodied approaches to AI[36] were championed by Hans Moravec[37] and Rodney Brooks[38] and went by many names: Nouvelle AI,[38] Developmental robotics,[39]
situated AI, behavior-based AI as well as others. A similar movement in cognitive science was the embodied mind thesis. - ^
Clark wrote: «After a half-decade of quiet breakthroughs in artificial intelligence, 2015 has been a landmark year. Computers are smarter and learning faster than ever.»[10] - ^ Alan Turing discussed the centrality of learning as early as 1950, in his classic paper «Computing Machinery and Intelligence».[62] In 1956, at the original Dartmouth AI summer conference, Ray Solomonoff wrote a report on unsupervised probabilistic machine learning: «An Inductive Inference Machine».[63]
- ^ This is a form of Tom Mitchell’s widely quoted definition of machine learning: «A computer program is set to learn from an experience E with respect to some task T and some performance measure P if its performance on T as measured by P improves with experience E.»[64]
- ^
Alan Turing suggested in «Computing Machinery and Intelligence» that a «thinking machine» would need to be educated like a child.[62] Developmental robotics is a modern version of the idea.[39] - ^
Compared with symbolic logic, formal Bayesian inference is computationally expensive. For inference to be tractable, most observations must be conditionally independent of one another. AdSense uses a Bayesian network with over 300 million edges to learn which ads to serve.[103] - ^ Expectation-maximization, one of the most popular algorithms in machine learning, allows clustering in the presence of unknown latent variables.[105]
- ^
The Smithsonian reports: «Pluribus has bested poker pros in a series of six-player no-limit Texas Hold’em games, reaching a milestone in artificial intelligence research. It is the first bot to beat humans in a complex multiplayer competition.»[147] - ^ See Problem of other minds
- ^ Nils Nilsson wrote in 1983: «Simply put, there is wide disagreement in the field about what AI is all about.»[165]
- ^
Daniel Crevier wrote that «time has proven the accuracy and perceptiveness of some of Dreyfus’s comments. Had he formulated them less aggressively, constructive actions they suggested might have been taken much earlier.»[170] - ^
Searle presented this definition of «Strong AI» in 1999.[181] Searle’s original formulation was «The appropriately programmed computer really is a mind, in the sense that computers given the right programs can be literally said to understand and have other cognitive states.»[182] Strong AI is defined similarly by Russell and Norvig: «The assertion that machines could possibly act intelligently (or, perhaps better, act as if they were intelligent) is called the ‘weak AI’ hypothesis by philosophers, and the assertion that machines that do so are actually thinking (as opposed to simulating thinking) is called the ‘strong AI’ hypothesis.»[177] - ^ See table 4; 9% is both the OECD average and the US average.[195]
- ^ Rodney Brooks writes, «I think it is a mistake to be worrying about us developing malevolent AI anytime in the next few hundred years. I think the worry stems from a fundamental error in not distinguishing the difference between the very real recent advances in a particular aspect of AI and the enormity and complexity of building sentient volitional intelligence.»[215]
References
- ^ «artificial intelligence, n. : Oxford English Dictionary». www.oed.com. Archived from the original on 5 November 2022. Retrieved 5 November 2022.
- ^ Google (2016).
- ^ McCorduck (2004), p. 204.
- ^ Ashok83 (2019).
- ^ Schank (1991), p. 38.
- ^ Crevier (1993), p. 109.
- ^ a b c
Funding initiatives in the early 80s: Fifth Generation Project (Japan), Alvey (UK), Microelectronics and Computer Technology Corporation (US), Strategic Computing Initiative (US):- McCorduck (2004, pp. 426–441)
- Crevier (1993, pp. 161–162, 197–203, 211, 240)
- Russell & Norvig (2003, p. 24)
- NRC (1999, pp. 210–211)
- Newquist (1994, pp. 235–248)
- ^ a b
First AI Winter, Lighthill report, Mansfield Amendment- Crevier (1993, pp. 115–117)
- Russell & Norvig (2003, p. 22)
- NRC (1999, pp. 212–213)
- Howe (1994)
- Newquist (1994, pp. 189–201)
- ^ a b
Second AI Winter:- McCorduck (2004, pp. 430–435)
- Crevier (1993, pp. 209–210)
- NRC (1999, pp. 214–216)
- Newquist (1994, pp. 301–318)
- ^ a b c d Clark (2015b).
- ^ a b
AI widely used in late 1990s:- Russell & Norvig (2003, p. 28)
- Kurzweil (2005, p. 265)
- NRC (1999, pp. 216–222)
- Newquist (1994, pp. 189–201)
- ^ a b
Pennachin & Goertzel (2007); Roberts (2016) - ^ McCarthy et al. (1955).
- ^ Newquist (1994), pp. 45–53.
- ^ a b
AI in myth:- McCorduck (2004, pp. 4–5)
- Russell & Norvig (2003, p. 939)
- ^ McCorduck (2004), pp. 17–25.
- ^ a b McCorduck (2004), pp. 340–400.
- ^ Berlinski (2000).
- ^
AI’s immediate precursors:- McCorduck (2004, pp. 51–107)
- Crevier (1993, pp. 27–32)
- Russell & Norvig (2003, pp. 15, 940)
- Moravec (1988, p. 3)
- ^ Russell & Norvig (2009), p. 16.
- ^ Manyika 2022, p. 9.
- ^ Manyika 2022, p. 10.
- ^ Crevier (1993), pp. 47–49.
- ^ a b Russell & Norvig (2003), p. 17.
- ^
Dartmouth workshop:- Russell & Norvig (2003, p. 17)
- McCorduck (2004, pp. 111–136)
- NRC (1999, pp. 200–201)
The proposal:
- McCarthy et al. (1955)
- ^ Russell & Norvig (2003), p. 18.
- ^
Successful Symbolic AI programs:- McCorduck (2004, pp. 243–252)
- Crevier (1993, pp. 52–107)
- Moravec (1988, p. 9)
- Russell & Norvig (2003, pp. 18–21)
- ^
AI heavily funded in 1960s:- McCorduck (2004, p. 131)
- Crevier (1993, pp. 51, 64–65)
- NRC (1999, pp. 204–205)
- ^ Howe (1994).
- ^ Newquist (1994), pp. 86–86.
- ^
Simon (1965, p. 96) quoted in Crevier (1993, p. 109) - ^
Minsky (1967, p. 2) quoted in Crevier (1993, p. 109) - ^ Lighthill (1973).
- ^
Expert systems:- Russell & Norvig (2003, pp. 22–24)
- Luger & Stubblefield (2004, pp. 227–331)
- Nilsson (1998, chpt. 17.4)
- McCorduck (2004, pp. 327–335, 434–435)
- Crevier (1993, pp. 145–62, 197–203)
- Newquist (1994, pp. 155–183)
- ^ Nilsson (1998), p. 7.
- ^ McCorduck (2004), pp. 454–462.
- ^ Moravec (1988).
- ^ a b Brooks (1990).
- ^ a b
Developmental robotics:- Weng et al. (2001)
- Lungarella et al. (2003)
- Asada et al. (2009)
- Oudeyer (2010)
- ^
Revival of connectionism:- Crevier (1993, pp. 214–215)
- Russell & Norvig (2003, p. 25)
- ^
Formal and narrow methods adopted in the 1990s:- Russell & Norvig (2003, pp. 25–26)
- McCorduck (2004, pp. 486–487)
- ^ McKinsey (2018).
- ^ MIT Sloan Management Review (2018); Lorica (2017)
- ^ a b c d UNESCO (2021).
- ^
Problem solving, puzzle solving, game playing and deduction:- Russell & Norvig (2003, chpt. 3–9)
- Poole, Mackworth & Goebel (1998, chpt. 2,3,7,9)
- Luger & Stubblefield (2004, chpt. 3,4,6,8)
- Nilsson (1998, chpt. 7–12)
- ^
Uncertain reasoning:- Russell & Norvig (2003, pp. 452–644)
- Poole, Mackworth & Goebel (1998, pp. 345–395)
- Luger & Stubblefield (2004, pp. 333–381)
- Nilsson (1998, chpt. 19)
- ^ a b c
Intractability and efficiency and the combinatorial explosion:- Russell & Norvig (2003, pp. 9, 21–22)
- ^ a b c
Psychological evidence of the prevalence sub-symbolic reasoning and knowledge:- Kahneman (2011)
- Wason & Shapiro (1966)
- Kahneman, Slovic & Tversky (1982)
- Dreyfus & Dreyfus (1986)
- ^
Knowledge representation and knowledge engineering:- Russell & Norvig (2003, pp. 260–266, 320–363)
- Poole, Mackworth & Goebel (1998, pp. 23–46, 69–81, 169–233, 235–277, 281–298, 319–345)
- Luger & Stubblefield (2004, pp. 227–243),
- Nilsson (1998, chpt. 17.1–17.4, 18)
- ^ Russell & Norvig (2003), pp. 320–328.
- ^ a b c
Representing categories and relations: Semantic networks, description logics, inheritance (including frames and scripts):- Russell & Norvig (2003, pp. 349–354),
- Poole, Mackworth & Goebel (1998, pp. 174–177),
- Luger & Stubblefield (2004, pp. 248–258),
- Nilsson (1998, chpt. 18.3)
- ^ a b Representing events and time:Situation calculus, event calculus, fluent calculus (including solving the frame problem):
- Russell & Norvig (2003, pp. 328–341),
- Poole, Mackworth & Goebel (1998, pp. 281–298),
- Nilsson (1998, chpt. 18.2)
- ^ a b
Causal calculus:- Poole, Mackworth & Goebel (1998, pp. 335–337)
- ^ a b
Representing knowledge about knowledge: Belief calculus, modal logics:- Russell & Norvig (2003, pp. 341–344),
- Poole, Mackworth & Goebel (1998, pp. 275–277)
- ^ a b
Default reasoning, Frame problem, default logic, non-monotonic logics, circumscription, closed world assumption, abduction:- Russell & Norvig (2003, pp. 354–360)
- Poole, Mackworth & Goebel (1998, pp. 248–256, 323–335)
- Luger & Stubblefield (2004, pp. 335–363)
- Nilsson (1998, ~18.3.3)
(Poole et al. places abduction under «default reasoning». Luger et al. places this under «uncertain reasoning»).
- ^ a b
Breadth of commonsense knowledge:- Russell & Norvig (2003, p. 21),
- Crevier (1993, pp. 113–114),
- Moravec (1988, p. 13),
- Lenat & Guha (1989, Introduction)
- ^ Smoliar & Zhang (1994).
- ^ Neumann & Möller (2008).
- ^ Kuperman, Reichley & Bailey (2006).
- ^ McGarry (2005).
- ^ Bertini, Del Bimbo & Torniai (2006).
- ^ a b Turing (1950).
- ^ Solomonoff (1956).
- ^ Russell & Norvig (2003), pp. 649–788.
- ^
Learning:- Russell & Norvig (2003, pp. 649–788)
- Poole, Mackworth & Goebel (1998, pp. 397–438)
- Luger & Stubblefield (2004, pp. 385–542)
- Nilsson (1998, chpt. 3.3, 10.3, 17.5, 20)
- ^
Reinforcement learning:- Russell & Norvig (2003, pp. 763–788)
- Luger & Stubblefield (2004, pp. 442–449)
- ^ The Economist (2016).
- ^ Jordan & Mitchell (2015).
- ^
Natural language processing (NLP):- Russell & Norvig (2003, pp. 790–831)
- Poole, Mackworth & Goebel (1998, pp. 91–104)
- Luger & Stubblefield (2004, pp. 591–632)
- ^
Applications of NLP:- Russell & Norvig (2003, pp. 840–857)
- Luger & Stubblefield (2004, pp. 623–630)
- ^ Modern statistical approaches to NLP:
- Cambria & White (2014)
- ^ Vincent (2019).
- ^
Machine perception:- Russell & Norvig (2003, pp. 537–581, 863–898)
- Nilsson (1998, ~chpt. 6)
- ^
Speech recognition:- Russell & Norvig (2003, pp. 568–578)
- ^
Object recognition:- Russell & Norvig (2003, pp. 885–892)
- ^
Computer vision:- Russell & Norvig (2003, pp. 863–898)
- Nilsson (1998, chpt. 6)
- ^ MIT AIL (2014).
- ^
Affective computing:- Thro (1993)
- Edelson (1991)
- Tao & Tan (2005)
- Scassellati (2002)
- ^ Waddell (2018).
- ^ Poria et al. (2017).
- ^
The Society of Mind:- Minsky (1986)
Moravec’s «golden spike»:
- Moravec (1988, p. 20)
Multi-agent systems, hybrid intelligent systems, agent architectures, cognitive architecture:
- Russell & Norvig (2003, pp. 27, 932, 970–972)
- Nilsson (1998, chpt. 25)
- ^ Domingos (2015), Chpt. 9.
- ^
Artificial brain as an approach to AGI:- Russell & Norvig (2003, p. 957)
- Crevier (1993, pp. 271 & 279)
- Goertzel et al. (2010)
A few of the people who make some form of the argument:
- Moravec (1988, p. 20)
- Kurzweil (2005, p. 262)
- Hawkins & Blakeslee (2005)
- ^
Search algorithms:- Russell & Norvig (2003, pp. 59–189)
- Poole, Mackworth & Goebel (1998, pp. 113–163)
- Luger & Stubblefield (2004, pp. 79–164, 193–219)
- Nilsson (1998, chpt. 7–12)
- ^ Forward chaining, backward chaining, Horn clauses, and logical deduction as search:
- Russell & Norvig (2003, pp. 217–225, 280–294)
- Poole, Mackworth & Goebel (1998, pp. ~46–52)
- Luger & Stubblefield (2004, pp. 62–73)
- Nilsson (1998, chpt. 4.2, 7.2)
- ^
State space search and planning:- Russell & Norvig (2003, pp. 382–387)
- Poole, Mackworth & Goebel (1998, pp. 298–305)
- Nilsson (1998, chpt. 10.1–2)
- ^ Moving and configuration space:
- Russell & Norvig (2003, pp. 916–932)
- ^ Uninformed searches (breadth first search, depth-first search and general state space search):
- Russell & Norvig (2003, pp. 59–93)
- Poole, Mackworth & Goebel (1998, pp. 113–132)
- Luger & Stubblefield (2004, pp. 79–121)
- Nilsson (1998, chpt.
- ^
Heuristic or informed searches (e.g., greedy best first and A*):- Russell & Norvig (2003, pp. 94–109)
- Poole, Mackworth & Goebel (1998, pp. pp. 132–147)
- Poole & Mackworth (2017, Section 3.6)
- Luger & Stubblefield (2004, pp. 133–150)
- ^ Tecuci (2012).
- ^ Optimization searches:
- Russell & Norvig (2003, pp. 110–116, 120–129)
- Poole, Mackworth & Goebel (1998, pp. 56–163)
- Luger & Stubblefield (2004, pp. 127–133)
- ^
Genetic programming and genetic algorithms:- Luger & Stubblefield (2004, pp. 509–530)
- Nilsson (1998, chpt. 4.2)
- ^
Artificial life and society based learning:- Luger & Stubblefield (2004, pp. 530–541)
- Merkle & Middendorf (2013)
- ^
Logic:- Russell & Norvig (2003, pp. 194–310),
- Luger & Stubblefield (2004, pp. 35–77),
- Nilsson (1998, chpt. 13–16)
- ^
Satplan:- Russell & Norvig (2003, pp. 402–407),
- Poole, Mackworth & Goebel (1998, pp. 300–301),
- Nilsson (1998, chpt. 21)
- ^
Explanation based learning, relevance based learning, inductive logic programming, case based reasoning:- Russell & Norvig (2003, pp. 678–710),
- Poole, Mackworth & Goebel (1998, pp. 414–416),
- Luger & Stubblefield (2004, pp. ~422–442),
- Nilsson (1998, chpt. 10.3, 17.5)
- ^
Propositional logic:- Russell & Norvig (2003, pp. 204–233),
- Luger & Stubblefield (2004, pp. 45–50)
- Nilsson (1998, chpt. 13)
- ^ First-order logic and features such as equality:
- Russell & Norvig (2003, pp. 240–310),
- Poole, Mackworth & Goebel (1998, pp. 268–275),
- Luger & Stubblefield (2004, pp. 50–62),
- Nilsson (1998, chpt. 15)
- ^
Fuzzy logic:- Russell & Norvig (2003, pp. 526–527)
- Scientific American (1999)
- ^ Abe, Jair Minoro; Nakamatsu, Kazumi (2009). «Multi-agent Systems and Paraconsistent Knowledge». Knowledge Processing and Decision Making in Agent-Based Systems. Studies in Computational Intelligence. Vol. 170. Springer Berlin Heidelberg. pp. 101–121. doi:10.1007/978-3-540-88049-3_5. eISSN 1860-9503. ISBN 978-3-540-88048-6. ISSN 1860-949X. Retrieved 2 August 2022.
- ^
Stochastic methods for uncertain reasoning:- Russell & Norvig (2003, pp. 462–644),
- Poole, Mackworth & Goebel (1998, pp. 345–395),
- Luger & Stubblefield (2004, pp. 165–191, 333–381),
- Nilsson (1998, chpt. 19)
- ^
Bayesian networks:- Russell & Norvig (2003, pp. 492–523),
- Poole, Mackworth & Goebel (1998, pp. 361–381),
- Luger & Stubblefield (2004, pp. ~182–190, ≈363–379),
- Nilsson (1998, chpt. 19.3–4)
- ^ Domingos (2015), chapter 6.
- ^
Bayesian inference algorithm:- Russell & Norvig (2003, pp. 504–519),
- Poole, Mackworth & Goebel (1998, pp. 361–381),
- Luger & Stubblefield (2004, pp. ~363–379),
- Nilsson (1998, chpt. 19.4 & 7)
- ^ Domingos (2015), p. 210.
- ^
Bayesian learning and the expectation-maximization algorithm:- Russell & Norvig (2003, pp. 712–724),
- Poole, Mackworth & Goebel (1998, pp. 424–433),
- Nilsson (1998, chpt. 20)
- Domingos (2015, p. 210)
- ^ Bayesian decision theory and Bayesian decision networks:
- Russell & Norvig (2003, pp. 597–600)
- ^ a b c Stochastic temporal models:
- Russell & Norvig (2003, pp. 537–581)
Dynamic Bayesian networks:
- Russell & Norvig (2003, pp. 551–557)
Hidden Markov model:
- (Russell & Norvig 2003, pp. 549–551)
Kalman filters:
- Russell & Norvig (2003, pp. 551–557)
- ^
decision theory and decision analysis:- Russell & Norvig (2003, pp. 584–597),
- Poole, Mackworth & Goebel (1998, pp. 381–394)
- ^
Information value theory:- Russell & Norvig (2003, pp. 600–604)
- ^ Markov decision processes and dynamic decision networks:
- Russell & Norvig (2003, pp. 613–631)
- ^ Game theory and mechanism design:
- Russell & Norvig (2003, pp. 631–643)
- ^
Statistical learning methods and classifiers:- Russell & Norvig (2003, pp. 712–754),
- Luger & Stubblefield (2004, pp. 453–541)
- ^
Decision tree:- Domingos (2015, p. 88)
- Russell & Norvig (2003, pp. 653–664),
- Poole, Mackworth & Goebel (1998, pp. 403–408),
- Luger & Stubblefield (2004, pp. 408–417)
- ^
K-nearest neighbor algorithm:- Domingos (2015, p. 187)
- Russell & Norvig (2003, pp. 733–736)
- ^
kernel methods such as the support vector machine:- Domingos (2015, p. 88)
- Russell & Norvig (2003, pp. 749–752)
Gaussian mixture model:
- Russell & Norvig (2003, pp. 725–727)
- ^ Domingos (2015), p. 152.
- ^
Naive Bayes classifier:- Domingos (2015, p. 152)
- Russell & Norvig (2003, p. 718)
- ^ a b
Neural networks:- Russell & Norvig (2003, pp. 736–748),
- Poole, Mackworth & Goebel (1998, pp. 408–414),
- Luger & Stubblefield (2004, pp. 453–505),
- Nilsson (1998, chpt. 3)
- Domingos (2015, Chapter 4)
- ^
Classifier performance:- van der Walt & Bernard (2006)
- Russell & Norvig (2009, 18.12: Learning from Examples: Summary)
- ^
Backpropagation:- Russell & Norvig (2003, pp. 744–748),
- Luger & Stubblefield (2004, pp. 467–474),
- Nilsson (1998, chpt. 3.3)
Paul Werbos’ introduction of backpropagation to AI:
- Werbos (1974); Werbos (1982)
Automatic differentiation, an essential precursor:
- Linnainmaa (1970); Griewank (2012)
- ^
Competitive learning, Hebbian coincidence learning, Hopfield networks and attractor networks:- Luger & Stubblefield (2004, pp. 474–505)
- ^
Feedforward neural networks, perceptrons and radial basis networks:- Russell & Norvig (2003, pp. 739–748, 758)
- Luger & Stubblefield (2004, pp. 458–467)
- ^ Schulz & Behnke (2012).
- ^
Deep learning:- Goodfellow, Bengio & Courville (2016)
- Hinton et al. (2016)
- Schmidhuber (2015)
- ^ Deng & Yu (2014), pp. 199–200.
- ^ Ciresan, Meier & Schmidhuber (2012).
- ^ Habibi (2017).
- ^ Fukushima (2007).
- ^
Recurrent neural networks, Hopfield nets:- Russell & Norvig (2003, p. 758)
- Luger & Stubblefield (2004, pp. 474–505)
- Schmidhuber (2015)
- ^ Schmidhuber (2015).
- ^
Werbos (1988);
Robinson & Fallside (1987);
Williams & Zipser (1994) - ^
Goodfellow, Bengio & Courville (2016);
Hochreiter (1991) - ^ Hochreiter & Schmidhuber (1997); Gers, Schraudolph & Schraudolph (2002)
- ^ Russell & Norvig (2009), p. 1.
- ^ European Commission (2020), p. 1.
- ^ CNN (2006).
- ^
Targeted advertising:- Russell & Norvig (2009, p. 1)
- Economist (2016)
- Lohr (2016)
- ^ Lohr (2016).
- ^ Smith (2016).
- ^ Rowinski (2013).
- ^ Frangoul (2019).
- ^ Brown (2019).
- ^ McCorduck (2004), pp. 480–483.
- ^ Markoff (2011).
- ^
Google (2016); BBC (2016) - ^ Solly (2019).
- ^ Bowling et al. (2015).
- ^ Sample (2017).
- ^ Anadiotis (2020).
- ^ Heath (2020).
- ^ Aletras et al. (2016).
- ^ «Going Nowhere Fast? Smart Traffic Lights Can Help Ease Gridlock». 18 May 2022.
- ^ «Intellectual Property and Frontier Technologies». WIPO.
- ^ a b «WIPO Technology Trends 2019 – Artificial Intelligence» (PDF). WIPO. 2019. Archived (PDF) from the original on 9 October 2022.
- ^ a b Turing (1950), p. 1.
- ^
Turing’s original publication of the Turing test in «Computing machinery and intelligence»:- Turing (1950)
Historical influence and philosophical implications:
- Haugeland (1985, pp. 6–9)
- Crevier (1993, p. 24)
- McCorduck (2004, pp. 70–71)
- Russell & Norvig (2021, pp. 2 and 984)
- ^ Turing (1950), Under «The Argument from Consciousness».
- ^ Russell & Norvig (2021), chpt. 2.
- ^ Russell & Norvig (2021), p. 3.
- ^ Maker (2006).
- ^ McCarthy 1999.
- ^ Minsky (1986).
- ^ «Artificial intelligence — Google Search». www.google.com. Retrieved 5 November 2022.
- ^ Nilsson (1983), p. 10.
- ^ Haugeland (1985), pp. 112–117.
- ^
Physical symbol system hypothesis:- Newell & Simon (1976, p. 116)
Historical significance:
- McCorduck (2004, p. 153)
- Russell & Norvig (2003, p. 18)
- ^
Moravec’s paradox:- Moravec (1988, pp. 15–16)
- Minsky (1986, p. 29)
- Pinker (2007, pp. 190–91)
- ^
Dreyfus’ critique of AI:- Dreyfus (1972)
- Dreyfus & Dreyfus (1986)
Historical significance and philosophical implications:
- Crevier (1993, pp. 120–132)
- McCorduck (2004, pp. 211–239)
- Russell & Norvig (2003, pp. 950–952)
- Fearn (2007, Chpt. 3)
- ^ Crevier (1993), p. 125.
- ^ Langley (2011).
- ^ Katz (2012).
- ^
Neats vs. scruffies, the historic debate:- McCorduck (2004, pp. 421–424, 486–489)
- Crevier (1993, p. 168)
- Nilsson (1983, pp. 10–11)
A classic example of the «scruffy» approach to intelligence:
- Minsky (1986)
A modern example of neat AI and its aspirations:
- Domingos (2015)
- ^ Russell & Norvig (2003), pp. 25–26.
- ^ Pennachin & Goertzel (2007).
- ^ a b Roberts (2016).
- ^ a b Russell & Norvig (2003), p. 947.
- ^ Chalmers (1995).
- ^ Dennett (1991).
- ^ Horst (2005).
- ^ Searle (1999).
- ^ Searle (1980), p. 1.
- ^
Searle’s Chinese room argument:- Searle (1980). Searle’s original presentation of the thought experiment.
- Searle (1999).
Discussion:
- Russell & Norvig (2003, pp. 958–960)
- McCorduck (2004, pp. 443–445)
- Crevier (1993, pp. 269–271)
- ^
Robot rights:- Russell & Norvig (2003, p. 964)
- BBC (2006)
- Maschafilm (2010) (the film Plug & Pray)
- ^ Evans (2015).
- ^ McCorduck (2004), pp. 19–25.
- ^ Henderson (2007).
- ^ Omohundro (2008).
- ^ Vinge (1993).
- ^ Russell & Norvig (2003), p. 963.
- ^
Transhumanism:- Moravec (1988)
- Kurzweil (2005)
- Russell & Norvig (2003, p. 963)
- ^
AI as evolution:- Edward Fredkin is quoted in McCorduck (2004, p. 401)
- Butler (1863)
- Dyson (1998)
- ^
Ford & Colvin (2015);
McGaughey (2018) - ^ IGM Chicago (2017).
- ^ Arntz, Gregory & Zierahn (2016), p. 33.
- ^
Lohr (2017);
Frey & Osborne (2017);
Arntz, Gregory & Zierahn (2016, p. 33) - ^ Morgenstern (2015).
- ^ Mahdawi (2017); Thompson (2014)
- ^ Harari (2018).
- ^
Weaponized AI:- Robitzski (2018)
- Sainato (2015)
- ^ Urbina, Fabio; Lentzos, Filippa; Invernizzi, Cédric; Ekins, Sean (7 March 2022). «Dual use of artificial-intelligence-powered drug discovery». Nature Machine Intelligence. 4 (3): 189–191. doi:10.1038/s42256-022-00465-9. PMC 9544280. PMID 36211133. S2CID 247302391. Retrieved 15 March 2022.
- ^ CNA (2019).
- ^ Goffrey (2008), p. 17.
- ^ Lipartito (2011, p. 36); Goodman & Flaxman (2017, p. 6)
- ^ Larson & Angwin (2016).
- ^ Dockrill, Peter, Robots With Flawed AI Make Sexist And Racist Decisions, Experiment Shows, Science Alert, 27 June 2022
- ^ Cellan-Jones (2014).
- ^ Bostrom (2014); Müller & Bostrom (2014); Bostrom (2015)
- ^ Rubin (2003).
- ^ Müller & Bostrom (2014).
- ^
Leaders’ concerns about the existential risks of AI:- Rawlinson (2015)
- Holley (2015)
- Gibbs (2014)
- Churm (2019)
- Sainato (2015)
- ^
Funding to mitigate risks of AI:- Post (2015)
- Del Prado (2015)
- Clark (2015a)
- FastCompany (2015)
- ^
Leaders who argue the benefits of AI outweigh the risks:- Thibodeau (2019)
- Bhardwaj (2018)
- ^
Arguments that AI is not an imminent risk:- Brooks (2014)
- Geist (2015)
- Madrigal (2015)
- Lee (2014)
- ^ Brooks (2014).
- ^ «Artificial intelligence and copyright». www.wipo.int. Retrieved 27 May 2022.
- ^ Yudkowsky (2008).
- ^ a b Anderson & Anderson (2011).
- ^ AAAI (2014).
- ^ Wallach (2010).
- ^ Russell (2019), p. 173.
- ^
Regulation of AI to mitigate risks:- Berryhill et al. (2019)
- Barfield & Pagallo (2018)
- Iphofen & Kritikos (2019)
- Wirtz, Weyerer & Geyer (2018)
- Buiten (2019)
- ^ Law Library of Congress (U.S.). Global Legal Research Directorate (2019).
- ^ Kissinger, Henry (1 November 2021). «The Challenge of Being Human in the Age of AI». The Wall Street Journal.
- ^ Buttazzo (2001).
- ^ Anderson (2008).
- ^ McCauley (2007).
- ^ Galvan (1997).
- ^ «A Visual Guide to the World’s Military Budgets». Bloomberg.com. 11 March 2022. Retrieved 11 May 2022.
- ^ Kharpal, Arjun (21 July 2017). «China wants to be a $150 billion world leader in AI in less than 15 years». CNBC. Retrieved 11 May 2022.
- ^ a b c Radina Gigova (2 September 2017). «Who Putin thinks will rule the world». CNN. Retrieved 18 May 2022.
- ^ «In Ukraine, A.I. is going to war». Fortune. Retrieved 11 May 2022.
- ^ a b «AI Is Already Learning from Russia’s War in Ukraine, DOD Says». Defense One. Retrieved 11 May 2022.
- ^ «A.I. drones used in the Ukraine war raise fears of killer robots wreaking havoc across future battlefields». Fortune. Retrieved 11 May 2022.
- ^ Vincent, James (21 August 2017). «Elon Musk and AI leaders call for a ban on killer robots». The Verge. Retrieved 11 May 2022.
- ^ Kerry, Cameron F. (10 February 2020). «Protecting privacy in an AI-driven world». Brookings. Retrieved 11 May 2022.
- ^ «CYBERSECURITY | CISA». www.cisa.gov. Retrieved 11 May 2022.
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AI textbooks
These were the four the most widely used AI textbooks in 2008:
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- Nilsson, Nils (1998). Artificial Intelligence: A New Synthesis. Morgan Kaufmann. ISBN 978-1-55860-467-4. Archived from the original on 26 July 2020. Retrieved 18 November 2019.
- Russell, Stuart J.; Norvig, Peter (2003), Artificial Intelligence: A Modern Approach (2nd ed.), Upper Saddle River, New Jersey: Prentice Hall, ISBN 0-13-790395-2.
- Poole, David; Mackworth, Alan; Goebel, Randy (1998). Computational Intelligence: A Logical Approach. New York: Oxford University Press. ISBN 978-0-19-510270-3. Archived from the original on 26 July 2020. Retrieved 22 August 2020.
Later editions.
- Russell, Stuart J.; Norvig, Peter (2009). Artificial Intelligence: A Modern Approach (3rd ed.). Upper Saddle River, New Jersey: Prentice Hall. ISBN 978-0-13-604259-4..
- Poole, David; Mackworth, Alan (2017). Artificial Intelligence: Foundations of Computational Agents (2nd ed.). Cambridge University Press. ISBN 978-1-107-19539-4.
The two most widely used textbooks in 2021.Open Syllabus: Explorer
- Russell, Stuart J.; Norvig, Peter (2021). Artificial Intelligence: A Modern Approach (4th ed.). Hoboken: Pearson. ISBN 9780134610993. LCCN 20190474.
- Knight, Kevin; Rich, Elaine (1 January 2010). Artificial Intelligence (3rd ed.). Mc Graw Hill India. ISBN 9780070087705.
History of AI
- Crevier, Daniel (1993). AI: The Tumultuous Search for Artificial Intelligence. New York, NY: BasicBooks. ISBN 0-465-02997-3..
- McCorduck, Pamela (2004), Machines Who Think (2nd ed.), Natick, MA: A. K. Peters, Ltd., ISBN 1-56881-205-1.
- Newquist, HP (1994). The Brain Makers: Genius, Ego, And Greed In The Quest For Machines That Think. New York: Macmillan/SAMS. ISBN 978-0-672-30412-5.
- Nilsson, Nils (2009). The Quest for Artificial Intelligence: A History of Ideas and Achievements. New York: Cambridge University Press. ISBN 978-0-521-12293-1.
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Further reading
- Autor, David H., «Why Are There Still So Many Jobs? The History and Future of Workplace Automation» (2015) 29(3) Journal of Economic Perspectives 3.
- Boden, Margaret, Mind As Machine, Oxford University Press, 2006.
- Cukier, Kenneth, «Ready for Robots? How to Think about the Future of AI», Foreign Affairs, vol. 98, no. 4 (July/August 2019), pp. 192–98. George Dyson, historian of computing, writes (in what might be called «Dyson’s Law») that «Any system simple enough to be understandable will not be complicated enough to behave intelligently, while any system complicated enough to behave intelligently will be too complicated to understand.» (p. 197.) Computer scientist Alex Pentland writes: «Current AI machine-learning algorithms are, at their core, dead simple stupid. They work, but they work by brute force.» (p. 198.)
- Domingos, Pedro, «Our Digital Doubles: AI will serve our species, not control it», Scientific American, vol. 319, no. 3 (September 2018), pp. 88–93.
- Gopnik, Alison, «Making AI More Human: Artificial intelligence has staged a revival by starting to incorporate what we know about how children learn», Scientific American, vol. 316, no. 6 (June 2017), pp. 60–65.
- Halpern, Sue, «The Human Costs of AI» (review of Kate Crawford, Atlas of AI: Power, Politics, and the Planetary Costs of Artificial Intelligence, Yale University Press, 2021, 327 pp.; Simon Chesterman, We, the Robots?: Regulating Artificial Intelligence and the Limits of the Law, Cambridge University Press, 2021, 289 pp.; Keven Roose, Futureproof: 9 Rules for Humans in the Age of Automation, Random House, 217 pp.; Erik J. Larson, The Myth of Artificial Intelligence: Why Computers Can’t Think the Way We Do, Belknap Press / Harvard University Press, 312 pp.), The New York Review of Books, vol. LXVIII, no. 16 (21 October 2021), pp. 29–31. «AI training models can replicate entrenched social and cultural biases. […] Machines only know what they know from the data they have been given. [p. 30.] [A]rtificial general intelligence–machine-based intelligence that matches our own–is beyond the capacity of algorithmic machine learning… ‘Your brain is one piece in a broader system which includes your body, your environment, other humans, and culture as a whole.’ [E]ven machines that master the tasks they are trained to perform can’t jump domains. AIVA, for example, can’t drive a car even though it can write music (and wouldn’t even be able to do that without Bach and Beethoven [and other composers on which AIVA is trained]).» (p. 31.)
- Johnston, John (2008) The Allure of Machinic Life: Cybernetics, Artificial Life, and the New AI, MIT Press.
- Koch, Christof, «Proust among the Machines», Scientific American, vol. 321, no. 6 (December 2019), pp. 46–49. Christof Koch doubts the possibility of «intelligent» machines attaining consciousness, because «[e]ven the most sophisticated brain simulations are unlikely to produce conscious feelings.» (p. 48.) According to Koch, «Whether machines can become sentient [is important] for ethical reasons. If computers experience life through their own senses, they cease to be purely a means to an end determined by their usefulness to… humans. Per GNW [the Global Neuronal Workspace theory], they turn from mere objects into subjects… with a point of view…. Once computers’ cognitive abilities rival those of humanity, their impulse to push for legal and political rights will become irresistible—the right not to be deleted, not to have their memories wiped clean, not to suffer pain and degradation. The alternative, embodied by IIT [Integrated Information Theory], is that computers will remain only supersophisticated machinery, ghostlike empty shells, devoid of what we value most: the feeling of life itself.» (p. 49.)
- Marcus, Gary, «Am I Human?: Researchers need new ways to distinguish artificial intelligence from the natural kind», Scientific American, vol. 316, no. 3 (March 2017), pp. 58–63. A stumbling block to AI has been an incapacity for reliable disambiguation. An example is the «pronoun disambiguation problem»: a machine has no way of determining to whom or what a pronoun in a sentence refers. (p. 61.)
- Gary Marcus, «Artificial Confidence: Even the newest, buzziest systems of artificial general intelligence are stymmied by the same old problems», Scientific American, vol. 327, no. 4 (October 2022), pp. 42–45.
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- George Musser, «Artificial Imagination: How machines could learn creativity and common sense, among other human qualities», Scientific American, vol. 320, no. 5 (May 2019), pp. 58–63.
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- Scharre, Paul, «Killer Apps: The Real Dangers of an AI Arms Race», Foreign Affairs, vol. 98, no. 3 (May/June 2019), pp. 135–44. «Today’s AI technologies are powerful but unreliable. Rules-based systems cannot deal with circumstances their programmers did not anticipate. Learning systems are limited by the data on which they were trained. AI failures have already led to tragedy. Advanced autopilot features in cars, although they perform well in some circumstances, have driven cars without warning into trucks, concrete barriers, and parked cars. In the wrong situation, AI systems go from supersmart to superdumb in an instant. When an enemy is trying to manipulate and hack an AI system, the risks are even greater.» (p. 140.)
- Serenko, Alexander (2010). «The development of an AI journal ranking based on the revealed preference approach» (PDF). Journal of Informetrics. 4 (4): 447–59. doi:10.1016/j.joi.2010.04.001. Archived (PDF) from the original on 4 October 2013. Retrieved 24 August 2013.
- Serenko, Alexander; Michael Dohan (2011). «Comparing the expert survey and citation impact journal ranking methods: Example from the field of Artificial Intelligence» (PDF). Journal of Informetrics. 5 (4): 629–49. doi:10.1016/j.joi.2011.06.002. Archived (PDF) from the original on 4 October 2013. Retrieved 12 September 2013.
- Tom Simonite (29 December 2014). «2014 in Computing: Breakthroughs in Artificial Intelligence». MIT Technology Review. Archived from the original on 2 January 2015.
- Sun, R. & Bookman, L. (eds.), Computational Architectures: Integrating Neural and Symbolic Processes. Kluwer Academic Publishers, Needham, MA. 1994.
- Taylor, Paul, «Insanely Complicated, Hopelessly Inadequate» (review of Brian Cantwell Smith, The Promise of Artificial Intelligence: Reckoning and Judgment, MIT, 2019, ISBN 978-0262043045, 157 pp.; Gary Marcus and Ernest Davis, Rebooting AI: Building Artificial Intelligence We Can Trust, Ballantine, 2019, ISBN 978-1524748258, 304 pp.; Judea Pearl and Dana Mackenzie, The Book of Why: The New Science of Cause and Effect, Penguin, 2019, ISBN 978-0141982410, 418 pp.), London Review of Books, vol. 43, no. 2 (21 January 2021), pp. 37–39. Paul Taylor writes (p. 39): «Perhaps there is a limit to what a computer can do without knowing that it is manipulating imperfect representations of an external reality.»
- Tooze, Adam, «Democracy and Its Discontents», The New York Review of Books, vol. LXVI, no. 10 (6 June 2019), pp. 52–53, 56–57. «Democracy has no clear answer for the mindless operation of bureaucratic and technological power. We may indeed be witnessing its extension in the form of artificial intelligence and robotics. Likewise, after decades of dire warning, the environmental problem remains fundamentally unaddressed…. Bureaucratic overreach and environmental catastrophe are precisely the kinds of slow-moving existential challenges that democracies deal with very badly…. Finally, there is the threat du jour: corporations and the technologies they promote.» (pp. 56–57.)
External links
- «Artificial Intelligence». Internet Encyclopedia of Philosophy.
- Thomason, Richmond. «Logic and Artificial Intelligence». In Zalta, Edward N. (ed.). Stanford Encyclopedia of Philosophy.
- Artificial Intelligence. BBC Radio 4 discussion with John Agar, Alison Adam & Igor Aleksander (In Our Time, 8 December 2005).
Artificial intelligence (AI) is intelligence—perceiving, synthesizing, and inferring information—demonstrated by machines, as opposed to intelligence displayed by animals such as humans. Example tasks in which this is done include speech recognition, computer vision, translation between (natural) languages, as well as other mappings of inputs. The Oxford English Dictionary of Oxford University Press defines artificial intelligence as:[1]
the theory and development of computer systems able to perform tasks that normally require human intelligence, such as visual perception, speech recognition, decision-making, and translation between languages.
AI applications include advanced web search engines (e.g., Google), recommendation systems (used by YouTube, Amazon and Netflix), understanding human speech (such as Siri and Alexa), self-driving cars (e.g., Waymo), automated decision-making and competing at the highest level in strategic game systems (such as chess and Go).[2]
As machines become increasingly capable, tasks considered to require «intelligence» are often removed from the definition of AI, a phenomenon known as the AI effect.[3] For instance, optical character recognition is frequently excluded from things considered to be AI,[4] having become a routine technology.[5]
Artificial intelligence was founded as an academic discipline in 1956, and in the years since has experienced several waves of optimism,[6][7] followed by disappointment and the loss of funding (known as an «AI winter»),[8][9] followed by new approaches, success and renewed funding.[7][10] AI research has tried and discarded many different approaches since its founding, including simulating the brain, modeling human problem solving, formal logic, large databases of knowledge and imitating animal behavior. In the first decades of the 21st century, highly mathematical-statistical machine learning has dominated the field, and this technique has proved highly successful, helping to solve many challenging problems throughout industry and academia.[10][11]
The various sub-fields of AI research are centered around particular goals and the use of particular tools. The traditional goals of AI research include reasoning, knowledge representation, planning, learning, natural language processing, perception, and the ability to move and manipulate objects.[a] General intelligence (the ability to solve an arbitrary problem) is among the field’s long-term goals.[12] To solve these problems, AI researchers have adapted and integrated a wide range of problem-solving techniques – including search and mathematical optimization, formal logic, artificial neural networks, and methods based on statistics, probability and economics. AI also draws upon computer science, psychology, linguistics, philosophy, and many other fields.
The field was founded on the assumption that human intelligence «can be so precisely described that a machine can be made to simulate it».[b]
This raised philosophical arguments about the mind and the ethical consequences of creating artificial beings endowed with human-like intelligence; these issues have previously been explored by myth, fiction and philosophy since antiquity.[14] Computer scientists and philosophers have since suggested that AI may become an existential risk to humanity if its rational capacities are not steered towards beneficial goals.[c]
History
Artificial beings with intelligence appeared as storytelling devices in antiquity,[15]
and have been common in fiction, as in Mary Shelley’s Frankenstein or Karel Čapek’s R.U.R.[16] These characters and their fates raised many of the same issues now discussed in the ethics of artificial intelligence.[17]
The study of mechanical or «formal» reasoning began with philosophers and mathematicians in antiquity. The study of mathematical logic led directly to Alan Turing’s theory of computation, which suggested that a machine, by shuffling symbols as simple as «0» and «1», could simulate any conceivable act of mathematical deduction. This insight that digital computers can simulate any process of formal reasoning is known as the Church–Turing thesis.[18] This, along with concurrent discoveries in neurobiology, information theory and cybernetics, led researchers to consider the possibility of building an electronic brain.[19]
The first work that is now generally recognized as AI was McCullouch and Pitts’ 1943 formal design for Turing-complete «artificial neurons».[20]
By the 1950s, two visions for how to achieve machine intelligence emerged. One vision, known as Symbolic AI or GOFAI, was to use computers to create a symbolic representation of the world and systems that could reason about the world. Proponents included Allen Newell, Herbert A. Simon, and Marvin Minsky. Closely associated with this approach was the «heuristic search» approach, which likened intelligence to a problem of exploring a space of possibilities for answers. The second vision, known as the connectionist approach, sought to achieve intelligence through learning. Proponents of this approach, most prominently Frank Rosenblatt, sought to connect Perceptron in ways inspired by connections of neurons.[21] James Manyika and others have compared the two approaches to the mind (Symbolic AI) and the brain (connectionist). Manyika argues that symbolic approaches dominated the push for artificial intelligence in this period, due in part to its connection to intellectual traditions of Descarte, Boole, Gottlob Frege, Bertrand Russell, and others. Connectionist approaches based on cybernetics or artificial neural networks were pushed to the background but have gained new prominence in recent decades.[22]
The field of AI research was born at a workshop at Dartmouth College in 1956.[d][25]
The attendees became the founders and leaders of AI research.[e]
They and their students produced programs that the press described as «astonishing»:[f]
computers were learning checkers strategies, solving word problems in algebra, proving logical theorems and speaking English.[g][27]
By the middle of the 1960s, research in the U.S. was heavily funded by the Department of Defense[28]
and laboratories had been established around the world.[29]
Researchers in the 1960s and the 1970s were convinced that symbolic approaches would eventually succeed in creating a machine with artificial general intelligence and considered this the goal of their field.[30]
Herbert Simon predicted, «machines will be capable, within twenty years, of doing any work a man can do».[31]
Marvin Minsky agreed, writing, «within a generation … the problem of creating ‘artificial intelligence’ will substantially be solved».[32] They had failed to recognize the difficulty of some of the remaining tasks. Progress slowed and in 1974, in response to the criticism of Sir James Lighthill[33]
and ongoing pressure from the US Congress to fund more productive projects, both the U.S. and British governments cut off exploratory research in AI. The next few years would later be called an «AI winter», a period when obtaining funding for AI projects was difficult.[8]
In the early 1980s, AI research was revived by the commercial success of expert systems,[34]
a form of AI program that simulated the knowledge and analytical skills of human experts. By 1985, the market for AI had reached over a billion dollars. At the same time, Japan’s fifth generation computer project inspired the U.S. and British governments to restore funding for academic research.[7]
However, beginning with the collapse of the Lisp Machine market in 1987, AI once again fell into disrepute, and a second, longer-lasting winter began.[9]
Many researchers began to doubt that the symbolic approach would be able to imitate all the processes of human cognition, especially perception, robotics, learning and pattern recognition. A number of researchers began to look into «sub-symbolic» approaches to specific AI problems.[35] Robotics researchers, such as Rodney Brooks, rejected symbolic AI and focused on the basic engineering problems that would allow robots to move, survive, and learn their environment.[h]
Interest in neural networks and «connectionism» was revived by Geoffrey Hinton, David Rumelhart and others in the middle of the 1980s.[40]
Soft computing tools were developed in the 1980s, such as neural networks, fuzzy systems, Grey system theory, evolutionary computation and many tools drawn from statistics or mathematical optimization.
AI gradually restored its reputation in the late 1990s and early 21st century by finding specific solutions to specific problems. The narrow focus allowed researchers to produce verifiable results, exploit more mathematical methods, and collaborate with other fields (such as statistics, economics and mathematics).[41]
By 2000, solutions developed by AI researchers were being widely used, although in the 1990s they were rarely described as «artificial intelligence».[11]
Faster computers, algorithmic improvements, and access to large amounts of data enabled advances in machine learning and perception; data-hungry deep learning methods started to dominate accuracy benchmarks around 2012.[42]
According to Bloomberg’s Jack Clark, 2015 was a landmark year for artificial intelligence, with the number of software projects that use AI within Google increased from a «sporadic usage» in 2012 to more than 2,700 projects.[i] He attributes this to an increase in affordable neural networks, due to a rise in cloud computing infrastructure and to an increase in research tools and datasets.[10] In a 2017 survey, one in five companies reported they had «incorporated AI in some offerings or processes».[43] The amount of research into AI (measured by total publications) increased by 50% in the years 2015–2019.[44]
Numerous academic researchers became concerned that AI was no longer pursuing the original goal of creating versatile, fully intelligent machines. Much of current research involves statistical AI, which is overwhelmingly used to solve specific problems, even highly successful techniques such as deep learning. This concern has led to the subfield of artificial general intelligence (or «AGI»), which had several well-funded institutions by the 2010s.[12]
Goals
The general problem of simulating (or creating) intelligence has been broken down into sub-problems. These consist of particular traits or capabilities that researchers expect an intelligent system to display. The traits described below have received the most attention.[a]
Reasoning, problem-solving
Early researchers developed algorithms that imitated step-by-step reasoning that humans use when they solve puzzles or make logical deductions.[45]
By the late 1980s and 1990s, AI research had developed methods for dealing with uncertain or incomplete information, employing concepts from probability and economics.[46]
Many of these algorithms proved to be insufficient for solving large reasoning problems because they experienced a «combinatorial explosion»: they became exponentially slower as the problems grew larger.[47]
Even humans rarely use the step-by-step deduction that early AI research could model. They solve most of their problems using fast, intuitive judgments.[48]
Knowledge representation
An ontology represents knowledge as a set of concepts within a domain and the relationships between those concepts.
Knowledge representation and knowledge engineering[49]
allow AI programs to answer questions intelligently and make deductions about real-world facts.
A representation of «what exists» is an ontology: the set of objects, relations, concepts, and properties formally described so that software agents can interpret them.[50]
The most general ontologies are called upper ontologies, which attempt to provide a foundation for all other knowledge and act as mediators between domain ontologies that cover specific knowledge about a particular knowledge domain (field of interest or area of concern). A truly intelligent program would also need access to commonsense knowledge; the set of facts that an average person knows. The semantics of an ontology is typically represented in description logic, such as the Web Ontology Language.[51]
AI research has developed tools to represent specific domains, such as objects, properties, categories and relations between objects;[51]
situations, events, states and time;[52]
causes and effects;[53]
knowledge about knowledge (what we know about what other people know);.[54]
default reasoning (things that humans assume are true until they are told differently and will remain true even when other facts are changing);
[55]
as well as other domains. Among the most difficult problems in AI are: the breadth of commonsense knowledge (the number of atomic facts that the average person knows is enormous);[56]
and the sub-symbolic form of most commonsense knowledge (much of what people know is not represented as «facts» or «statements» that they could express verbally).[48]
Formal knowledge representations are used in content-based indexing and retrieval,[57]
scene interpretation,[58]
clinical decision support,[59]
knowledge discovery (mining «interesting» and actionable inferences from large databases),[60]
and other areas.[61]
Learning
Machine learning (ML), a fundamental concept of AI research since the field’s inception,[j]
is the study of computer algorithms that improve automatically through experience.[k]
Unsupervised learning finds patterns in a stream of input. Supervised learning requires a human to label the input data first, and comes in two main varieties: classification and numerical regression. Classification is used to determine what category something belongs in – the program sees a number of examples of things from several categories and will learn to classify new inputs. Regression is the attempt to produce a function that describes the relationship between inputs and outputs and predicts how the outputs should change as the inputs change. Both classifiers and regression learners can be viewed as «function approximators» trying to learn an unknown (possibly implicit) function; for example, a spam classifier can be viewed as learning a function that maps from the text of an email to one of two categories, «spam» or «not spam».[65]
In reinforcement learning the agent is rewarded for good responses and punished for bad ones. The agent classifies its responses to form a strategy for operating in its problem space.[66]
Transfer learning is when the knowledge gained from one problem is applied to a new problem.[67]
Computational learning theory can assess learners by computational complexity, by sample complexity (how much data is required), or by other notions of optimization.[68]
Natural language processing
Natural language processing (NLP)[69]
allows machines to read and understand human language. A sufficiently powerful natural language processing system would enable natural-language user interfaces and the acquisition of knowledge directly from human-written sources, such as newswire texts. Some straightforward applications of NLP include information retrieval, question answering and machine translation.[70]
Symbolic AI used formal syntax to translate the deep structure of sentences into logic. This failed to produce useful applications, due to the intractability of logic[47] and the breadth of commonsense knowledge.[56] Modern statistical techniques include co-occurrence frequencies (how often one word appears near another), «Keyword spotting» (searching for a particular word to retrieve information), transformer-based deep learning (which finds patterns in text), and others.[71] They have achieved acceptable accuracy at the page or paragraph level, and, by 2019, could generate coherent text.[72]
Perception
Machine perception[73]
is the ability to use input from sensors (such as cameras, microphones, wireless signals, and active lidar, sonar, radar, and tactile sensors) to deduce aspects of the world. Applications include speech recognition,[74]
facial recognition, and object recognition.[75]
Computer vision is the ability to analyze visual input.[76]
Kismet, a robot with rudimentary social skills[77]
Affective computing is an interdisciplinary umbrella that comprises systems that recognize, interpret, process or simulate human feeling, emotion and mood.[78]
For example, some virtual assistants are programmed to speak conversationally or even to banter humorously; it makes them appear more sensitive to the emotional dynamics of human interaction, or to otherwise facilitate human–computer interaction.
However, this tends to give naïve users an unrealistic conception of how intelligent existing computer agents actually are.[79] Moderate successes related to affective computing include textual sentiment analysis and, more recently, multimodal sentiment analysis), wherein AI classifies the affects displayed by a videotaped subject.[80]
General intelligence
A machine with general intelligence can solve a wide variety of problems with breadth and versatility similar to human intelligence. There are several competing ideas about how to develop artificial general intelligence. Hans Moravec and Marvin Minsky argue that work in different individual domains can be incorporated into an advanced multi-agent system or cognitive architecture with general intelligence.[81]
Pedro Domingos hopes that there is a conceptually straightforward, but mathematically difficult, «master algorithm» that could lead to AGI.[82]
Others believe that anthropomorphic features like an artificial brain[83]
or simulated child development[l]
will someday reach a critical point where general intelligence emerges.
Tools
Search and optimization
AI can solve many problems by intelligently searching through many possible solutions.[84] Reasoning can be reduced to performing a search. For example, logical proof can be viewed as searching for a path that leads from premises to conclusions, where each step is the application of an inference rule.[85] Planning algorithms search through trees of goals and subgoals, attempting to find a path to a target goal, a process called means-ends analysis.[86] Robotics algorithms for moving limbs and grasping objects use local searches in configuration space.[87]
Simple exhaustive searches[88]
are rarely sufficient for most real-world problems: the search space (the number of places to search) quickly grows to astronomical numbers. The result is a search that is too slow or never completes. The solution, for many problems, is to use «heuristics» or «rules of thumb» that prioritize choices in favor of those more likely to reach a goal and to do so in a shorter number of steps. In some search methodologies, heuristics can also serve to eliminate some choices unlikely to lead to a goal (called «pruning the search tree»). Heuristics supply the program with a «best guess» for the path on which the solution lies.[89]
Heuristics limit the search for solutions into a smaller sample size.[90]
A very different kind of search came to prominence in the 1990s, based on the mathematical theory of optimization. For many problems, it is possible to begin the search with some form of a guess and then refine the guess incrementally until no more refinements can be made. These algorithms can be visualized as blind hill climbing: we begin the search at a random point on the landscape, and then, by jumps or steps, we keep moving our guess uphill, until we reach the top. Other related optimization algorithms include random optimization, beam search and metaheuristics like simulated annealing.[91] Evolutionary computation uses a form of optimization search. For example, they may begin with a population of organisms (the guesses) and then allow them to mutate and recombine, selecting only the fittest to survive each generation (refining the guesses). Classic evolutionary algorithms include genetic algorithms, gene expression programming, and genetic programming.[92] Alternatively, distributed search processes can coordinate via swarm intelligence algorithms. Two popular swarm algorithms used in search are particle swarm optimization (inspired by bird flocking) and ant colony optimization (inspired by ant trails).[93]
Logic
Logic[94]
is used for knowledge representation and problem-solving, but it can be applied to other problems as well. For example, the satplan algorithm uses logic for planning[95]
and inductive logic programming is a method for learning.[96]
Several different forms of logic are used in AI research. Propositional logic[97] involves truth functions such as «or» and «not». First-order logic[98]
adds quantifiers and predicates and can express facts about objects, their properties, and their relations with each other. Fuzzy logic assigns a «degree of truth» (between 0 and 1) to vague statements such as «Alice is old» (or rich, or tall, or hungry), that are too linguistically imprecise to be completely true or false.[99]
Default logics, non-monotonic logics and circumscription are forms of logic designed to help with default reasoning and the qualification problem.[55]
Several extensions of logic have been designed to handle specific domains of knowledge, such as description logics;[51]
situation calculus, event calculus and fluent calculus (for representing events and time);[52]
causal calculus;[53]
belief calculus (belief revision); and modal logics.[54]
Logics to model contradictory or inconsistent statements arising in multi-agent systems have also been designed, such as paraconsistent logics.[100]
Probabilistic methods for uncertain reasoning
Expectation-maximization clustering of Old Faithful eruption data starts from a random guess but then successfully converges on an accurate clustering of the two physically distinct modes of eruption.
Many problems in AI (including in reasoning, planning, learning, perception, and robotics) require the agent to operate with incomplete or uncertain information. AI researchers have devised a number of tools to solve these problems using methods from probability theory and economics.[101]
Bayesian networks[102]
are a very general tool that can be used for various problems, including reasoning (using the Bayesian inference algorithm),[m][104]
learning (using the expectation-maximization algorithm),[n][106]
planning (using decision networks)[107] and perception (using dynamic Bayesian networks).[108]
Probabilistic algorithms can also be used for filtering, prediction, smoothing and finding explanations for streams of data, helping perception systems to analyze processes that occur over time (e.g., hidden Markov models or Kalman filters).[108]
A key concept from the science of economics is «utility», a measure of how valuable something is to an intelligent agent. Precise mathematical tools have been developed that analyze how an agent can make choices and plan, using decision theory, decision analysis,[109]
and information value theory.[110] These tools include models such as Markov decision processes,[111] dynamic decision networks,[108] game theory and mechanism design.[112]
Classifiers and statistical learning methods
The simplest AI applications can be divided into two types: classifiers («if shiny then diamond») and controllers («if diamond then pick up»). Controllers do, however, also classify conditions before inferring actions, and therefore classification forms a central part of many AI systems. Classifiers are functions that use pattern matching to determine the closest match. They can be tuned according to examples, making them very attractive for use in AI. These examples are known as observations or patterns. In supervised learning, each pattern belongs to a certain predefined class. A class is a decision that has to be made. All the observations combined with their class labels are known as a data set. When a new observation is received, that observation is classified based on previous experience.[113]
A classifier can be trained in various ways; there are many statistical and machine learning approaches.
The decision tree is the simplest and most widely used symbolic machine learning algorithm.[114]
K-nearest neighbor algorithm was the most widely used analogical AI until the mid-1990s.[115]
Kernel methods such as the support vector machine (SVM) displaced k-nearest neighbor in the 1990s.[116]
The naive Bayes classifier is reportedly the «most widely used learner»[117] at Google, due in part to its scalability.[118]
Neural networks are also used for classification.[119]
Classifier performance depends greatly on the characteristics of the data to be classified, such as the dataset size, distribution of samples across classes, dimensionality, and the level of noise. Model-based classifiers perform well if the assumed model is an extremely good fit for the actual data. Otherwise, if no matching model is available, and if accuracy (rather than speed or scalability) is the sole concern, conventional wisdom is that discriminative classifiers (especially SVM) tend to be more accurate than model-based classifiers such as «naive Bayes» on most practical data sets.[120]
Artificial neural networks
A neural network is an interconnected group of nodes, akin to the vast network of neurons in the human brain.
Neural networks[119]
were inspired by the architecture of neurons in the human brain. A simple «neuron» N accepts input from other neurons, each of which, when activated (or «fired»), casts a weighted «vote» for or against whether neuron N should itself activate. Learning requires an algorithm to adjust these weights based on the training data; one simple algorithm (dubbed «fire together, wire together») is to increase the weight between two connected neurons when the activation of one triggers the successful activation of another. Neurons have a continuous spectrum of activation; in addition, neurons can process inputs in a nonlinear way rather than weighing straightforward votes.
Modern neural networks model complex relationships between inputs and outputs and find patterns in data. They can learn continuous functions and even digital logical operations. Neural networks can be viewed as a type of mathematical optimization – they perform gradient descent on a multi-dimensional topology that was created by training the network. The most common training technique is the backpropagation algorithm.[121]
Other learning techniques for neural networks are Hebbian learning («fire together, wire together»), GMDH or competitive learning.[122]
The main categories of networks are acyclic or feedforward neural networks (where the signal passes in only one direction) and recurrent neural networks (which allow feedback and short-term memories of previous input events). Among the most popular feedforward networks are perceptrons, multi-layer perceptrons and radial basis networks.[123]
Deep learning
Representing images on multiple layers of abstraction in deep learning[124]
Deep learning[125]
uses several layers of neurons between the network’s inputs and outputs. The multiple layers can progressively extract higher-level features from the raw input. For example, in image processing, lower layers may identify edges, while higher layers may identify the concepts relevant to a human such as digits or letters or faces.[126] Deep learning has drastically improved the performance of programs in many important subfields of artificial intelligence, including computer vision, speech recognition, image classification[127] and others.
Deep learning often uses convolutional neural networks for many or all of its layers. In a convolutional layer, each neuron receives input from only a restricted area of the previous layer called the neuron’s receptive field. This can substantially reduce the number of weighted connections between neurons,[128] and creates a hierarchy similar to the organization of the animal visual cortex.[129]
In a recurrent neural network (RNN) the signal will propagate through a layer more than once;[130]
thus, an RNN is an example of deep learning.[131]
RNNs can be trained by gradient descent,[132]
however long-term gradients which are back-propagated can «vanish» (that is, they can tend to zero) or «explode» (that is, they can tend to infinity), known as the vanishing gradient problem.[133]
The long short term memory (LSTM) technique can prevent this in most cases.[134]
Specialized languages and hardware
Specialized languages for artificial intelligence have been developed, such as Lisp, Prolog, TensorFlow and many others. Hardware developed for AI includes AI accelerators and neuromorphic computing.
Applications
For this project the AI had to learn the typical patterns in the colors and brushstrokes of Renaissance painter Raphael. The portrait shows the face of the actress Ornella Muti, «painted» by AI in the style of Raphael.
AI is relevant to any intellectual task.[135]
Modern artificial intelligence techniques are pervasive and are too numerous to list here.[136]
Frequently, when a technique reaches mainstream use, it is no longer considered artificial intelligence; this phenomenon is described as the AI effect.[137]
In the 2010s, AI applications were at the heart of the most commercially successful areas of computing, and have become a ubiquitous feature of daily life. AI is used in search engines (such as Google Search),
targeting online advertisements,[138] recommendation systems (offered by Netflix, YouTube or Amazon),
driving internet traffic,[139][140] targeted advertising (AdSense, Facebook),
virtual assistants (such as Siri or Alexa),[141] autonomous vehicles (including drones and self-driving cars),
automatic language translation (Microsoft Translator, Google Translate),
facial recognition (Apple’s Face ID or Microsoft’s DeepFace),
image labeling (used by Facebook, Apple’s iPhoto and TikTok)
and spam filtering.
There are also thousands of successful AI applications used to solve problems for specific industries or institutions. A few examples are energy storage,[142] deepfakes,[143] medical diagnosis, military logistics, or supply chain management.
Game playing has been a test of AI’s strength since the 1950s. Deep Blue became the first computer chess-playing system to beat a reigning world chess champion, Garry Kasparov, on 11 May 1997.[144] In 2011, in a Jeopardy! quiz show exhibition match, IBM’s question answering system, Watson, defeated the two greatest Jeopardy! champions, Brad Rutter and Ken Jennings, by a significant margin.[145]
In March 2016, AlphaGo won 4 out of 5 games of Go in a match with Go champion Lee Sedol, becoming the first computer Go-playing system to beat a professional Go player without handicaps.[146] Other programs handle imperfect-information games; such as for poker at a superhuman level, Pluribus[o] and Cepheus.[148] DeepMind in the 2010s developed a «generalized artificial intelligence» that could learn many diverse Atari games on its own.[149]
By 2020, Natural Language Processing systems such as the enormous GPT-3 (then by far the largest artificial neural network) were matching human performance on pre-existing benchmarks, albeit without the system attaining a commonsense understanding of the contents of the benchmarks.[150]
DeepMind’s AlphaFold 2 (2020) demonstrated the ability to approximate, in hours rather than months, the 3D structure of a protein.[151]
Other applications predict the result of judicial decisions,[152] create art (such as poetry or painting) and prove mathematical theorems.
Smart traffic lights
Smart traffic lights have been developed at Carnegie Mellon since 2009. Professor Stephen Smith has started a company since then Surtrac that has installed smart traffic control systems in 22 cities. It costs about $20,000 per intersection to install. Drive time has been reduced by 25% and traffic jam waiting time has been reduced by 40% at the intersections it has been installed.[153]
Intellectual Property
AI Patent families for functional application categories and sub categories. Computer vision represents 49 percent of patent families related to a functional application in 2016.
In 2019, WIPO reported that AI was the most prolific emerging technology in terms of number of patent applications and granted patents, the Internet of things was estimated to be the largest in terms of market size. It was followed, again in market size, by big data technologies, robotics, AI, 3D printing and the fifth generation of mobile services (5G).[154] Since AI emerged in the 1950s, 340,000 AI-related patent applications were filed by innovators and 1.6 million scientific papers have been published by researchers, with the majority of all AI-related patent filings published since 2013. Companies represent 26 out of the top 30 AI patent applicants, with universities or public research organizations accounting for the remaining four.[155] The ratio of scientific papers to inventions has significantly decreased from 8:1 in 2010 to 3:1 in 2016, which is attributed to be indicative of a shift from theoretical research to the use of AI technologies in commercial products and services. Machine learning is the dominant AI technique disclosed in patents and is included in more than one-third of all identified inventions (134,777 machine learning patents filed for a total of 167,038 AI patents filed in 2016), with computer vision being the most popular functional application. AI-related patents not only disclose AI techniques and applications, they often also refer to an application field or industry. Twenty application fields were identified in 2016 and included, in order of magnitude: telecommunications (15 percent), transportation (15 percent), life and medical sciences (12 percent), and personal devices, computing and human–computer interaction (11 percent). Other sectors included banking, entertainment, security, industry and manufacturing, agriculture, and networks (including social networks, smart cities and the Internet of things). IBM has the largest portfolio of AI patents with 8,290 patent applications, followed by Microsoft with 5,930 patent applications.[155]
Philosophy
Defining artificial intelligence
Alan Turing wrote in 1950 «I propose to consider the question ‘can machines think’?»[156]
He advised changing the question from whether a machine «thinks», to «whether or not it is possible for machinery to show intelligent behaviour».[156]
He devised the Turing test, which measures the ability of a machine to simulate human conversation.[157] Since we can only observe the behavior of the machine, it does not matter if it is «actually» thinking or literally has a «mind». Turing notes that we can not determine these things about other people[p] but «it is usual to have a polite convention that everyone thinks»[158]
Russell and Norvig agree with Turing that AI must be defined in terms of «acting» and not «thinking».[159] However, they are critical that the test compares machines to people. «Aeronautical engineering texts,» they wrote, «do not define the goal of their field as making ‘machines that fly so exactly like pigeons that they can fool other pigeons.‘«[160] AI founder John McCarthy agreed, writing that «Artificial intelligence is not, by definition, simulation of human intelligence».[161]
McCarthy defines intelligence as «the computational part of the ability to achieve goals in the world.»[162] Another AI founder, Marvin Minsky similarly defines it as «the ability to solve hard problems».[163] These definitions view intelligence in terms of well-defined problems with well-defined solutions, where both the difficulty of the problem and the performance of the program are direct measures of the «intelligence» of the machine — and no other philosophical discussion is required, or may not even be possible.
A definition that has also been adopted by Google[164][better source needed] — major practitionary in the field of AI.
This definition stipulated the ability of systems to synthesize information as the manifestation of intelligence, similar to the way it is defined in biological intelligence.
Evaluating approaches to AI
No established unifying theory or paradigm has guided AI research for most of its history.[q] The unprecedented success of statistical machine learning in the 2010s eclipsed all other approaches (so much so that some sources, especially in the business world, use the term «artificial intelligence» to mean «machine learning with neural networks»). This approach is mostly sub-symbolic, neat, soft and narrow (see below). Critics argue that these questions may have to be revisited by future generations of AI researchers.
Symbolic AI and its limits
Symbolic AI (or «GOFAI»)[166] simulated the high-level conscious reasoning that people use when they solve puzzles, express legal reasoning and do mathematics. They were highly successful at «intelligent» tasks such as algebra or IQ tests. In the 1960s, Newell and Simon proposed the physical symbol systems hypothesis: «A physical symbol system has the necessary and sufficient means of general intelligent action.»[167]
However, the symbolic approach failed on many tasks that humans solve easily, such as learning, recognizing an object or commonsense reasoning. Moravec’s paradox is the discovery that high-level «intelligent» tasks were easy for AI, but low level «instinctive» tasks were extremely difficult.[168]
Philosopher Hubert Dreyfus had argued since the 1960s that human expertise depends on unconscious instinct rather than conscious symbol manipulation, and on having a «feel» for the situation, rather than explicit symbolic knowledge.[169]
Although his arguments had been ridiculed and ignored when they were first presented, eventually, AI research came to agree.[r][48]
The issue is not resolved: sub-symbolic reasoning can make many of the same inscrutable mistakes that human intuition does, such as algorithmic bias. Critics such as Noam Chomsky argue continuing research into symbolic AI will still be necessary to attain general intelligence,[171][172] in part because sub-symbolic AI is a move away from explainable AI: it can be difficult or impossible to understand why a modern statistical AI program made a particular decision. The emerging field of neurosymbolic artificial intelligence attempts to bridge the two approaches.
Neat vs. scruffy
«Neats» hope that intelligent behavior is described using simple, elegant principles (such as logic, optimization, or neural networks). «Scruffies» expect that it necessarily requires solving a large number of unrelated problems (especially in areas like common sense reasoning). This issue was actively discussed in the 70s and 80s,[173]
but in the 1990s mathematical methods and solid scientific standards became the norm, a transition that Russell and Norvig termed «the victory of the neats».[174]
Soft vs. hard computing
Finding a provably correct or optimal solution is intractable for many important problems.[47] Soft computing is a set of techniques, including genetic algorithms, fuzzy logic and neural networks, that are tolerant of imprecision, uncertainty, partial truth and approximation. Soft computing was introduced in the late 80s and most successful AI programs in the 21st century are examples of soft computing with neural networks.
Narrow vs. general AI
AI researchers are divided as to whether to pursue the goals of artificial general intelligence and superintelligence (general AI) directly or to solve as many specific problems as possible (narrow AI) in hopes these solutions will lead indirectly to the field’s long-term goals.[175][176]
General intelligence is difficult to define and difficult to measure, and modern AI has had more verifiable successes by focusing on specific problems with specific solutions. The experimental sub-field of artificial general intelligence studies this area exclusively.
Machine consciousness, sentience and mind
The philosophy of mind does not know whether a machine can have a mind, consciousness and mental states, in the same sense that human beings do. This issue considers the internal experiences of the machine, rather than its external behavior. Mainstream AI research considers this issue irrelevant because it does not affect the goals of the field. Stuart Russell and Peter Norvig observe that most AI researchers «don’t care about the [philosophy of AI] – as long as the program works, they don’t care whether you call it a simulation of intelligence or real intelligence.»[177] However, the question has become central to the philosophy of mind. It is also typically the central question at issue in artificial intelligence in fiction.
Consciousness
David Chalmers identified two problems in understanding the mind, which he named the «hard» and «easy» problems of consciousness.[178] The easy problem is understanding how the brain processes signals, makes plans and controls behavior. The hard problem is explaining how this feels or why it should feel like anything at all. Human information processing is easy to explain, however, human subjective experience is difficult to explain. For example, it is easy to imagine a color-blind person who has learned to identify which objects in their field of view are red, but it is not clear what would be required for the person to know what red looks like.[179]
Computationalism and functionalism
Computationalism is the position in the philosophy of mind that the human mind is an information processing system and that thinking is a form of computing. Computationalism argues that the relationship between mind and body is similar or identical to the relationship between software and hardware and thus may be a solution to the mind-body problem. This philosophical position was inspired by the work of AI researchers and cognitive scientists in the 1960s and was originally proposed by philosophers Jerry Fodor and Hilary Putnam.[180]
Philosopher John Searle characterized this position as «strong AI»: «The appropriately programmed computer with the right inputs and outputs would thereby have a mind in exactly the same sense human beings have minds.»[s]
Searle counters this assertion with his Chinese room argument, which attempts to show that, even if a machine perfectly simulates human behavior, there is still no reason to suppose it also has a mind.[183]
Robot rights
If a machine has a mind and subjective experience, then it may also have sentience (the ability to feel), and if so, then it could also suffer, and thus it would be entitled to certain rights.[184]
Any hypothetical robot rights would lie on a spectrum with animal rights and human rights.[185]
This issue has been considered in fiction for centuries,[186]
and is now being considered by, for example, California’s Institute for the Future; however, critics argue that the discussion is premature.[187]
Future
Superintelligence
A superintelligence, hyperintelligence, or superhuman intelligence, is a hypothetical agent that would possess intelligence far surpassing that of the brightest and most gifted human mind. Superintelligence may also refer to the form or degree of intelligence possessed by such an agent.[176]
If research into artificial general intelligence produced sufficiently intelligent software, it might be able to reprogram and improve itself. The improved software would be even better at improving itself, leading to recursive self-improvement.[188]
Its intelligence would increase exponentially in an intelligence explosion and could dramatically surpass humans. Science fiction writer Vernor Vinge named this scenario the «singularity».[189]
Because it is difficult or impossible to know the limits of intelligence or the capabilities of superintelligent machines, the technological singularity is an occurrence beyond which events are unpredictable or even unfathomable.[190]
Robot designer Hans Moravec, cyberneticist Kevin Warwick, and inventor Ray Kurzweil have predicted that humans and machines will merge in the future into cyborgs that are more capable and powerful than either. This idea, called transhumanism, has roots in Aldous Huxley and Robert Ettinger.[191]
Edward Fredkin argues that «artificial intelligence is the next stage in evolution», an idea first proposed by Samuel Butler’s «Darwin among the Machines» as far back as 1863, and expanded upon by George Dyson in his book of the same name in 1998.[192]
Risks
Technological unemployment
In the past, technology has tended to increase rather than reduce total employment, but economists acknowledge that «we’re in uncharted territory» with AI.[193]
A survey of economists showed disagreement about whether the increasing use of robots and AI will cause a substantial increase in long-term unemployment, but they generally agree that it could be a net benefit if productivity gains are redistributed.[194]
Subjective estimates of the risk vary widely; for example, Michael Osborne and Carl Benedikt Frey estimate 47% of U.S. jobs are at «high risk» of potential automation, while an OECD report classifies only 9% of U.S. jobs as «high risk».[t][196]
Unlike previous waves of automation, many middle-class jobs may be eliminated by artificial intelligence; The Economist states that «the worry that AI could do to white-collar jobs what steam power did to blue-collar ones during the Industrial Revolution» is «worth taking seriously».[197]
Jobs at extreme risk range from paralegals to fast food cooks, while job demand is likely to increase for care-related professions ranging from personal healthcare to the clergy.[198]
Bad actors and weaponized AI
AI provides a number of tools that are particularly useful for authoritarian governments: smart spyware, face recognition and voice recognition allow widespread surveillance; such surveillance allows machine learning to classify potential enemies of the state and can prevent them from hiding; recommendation systems can precisely target propaganda and misinformation for maximum effect; deepfakes aid in producing misinformation; advanced AI can make centralized decision making more competitive with liberal and decentralized systems such as markets.[199]
Terrorists, criminals and rogue states may use other forms of weaponized AI such as advanced digital warfare and lethal autonomous weapons. By 2015, over fifty countries were reported to be researching battlefield robots.[200]
Machine-learning AI is also able to design tens of thousands of toxic molecules in a matter of hours.[201]
Algorithmic bias
AI programs can become biased after learning from real-world data. It is not typically introduced by the system designers but is learned by the program, and thus the programmers are often unaware that the bias exists.[202]
Bias can be inadvertently introduced by the way training data is selected.[203]
It can also emerge from correlations: AI is used to classify individuals into groups and then make predictions assuming that the individual will resemble other members of the group. In some cases, this assumption may be unfair.[204]
An example of this is COMPAS, a commercial program widely used by U.S. courts to assess the likelihood of a defendant becoming a recidivist. ProPublica claims that the COMPAS-assigned recidivism risk level of black defendants is far more likely to be overestimated than that of white defendants, despite the fact that the program was not told the races of the defendants.[205] Other examples where algorithmic bias can lead to unfair outcomes are when AI is used for credit rating or hiring.
At its 2022 Conference on Fairness, Accountability, and Transparency (ACM FAccT 2022) the Association for Computing Machinery, in Seoul, South Korea, presented and published findings recommending that until AI and robotics systems are demonstrated to be free of bias mistakes, they are unsafe and the use of self-learning neural networks trained on vast, unregulated sources of flawed internet data should be curtailed.[206]
Existential risk
Superintelligent AI may be able to improve itself to the point that humans could not control it. This could, as physicist Stephen Hawking puts it, «spell the end of the human race».[207] Philosopher Nick Bostrom argues that sufficiently intelligent AI, if it chooses actions based on achieving some goal, will exhibit convergent behavior such as acquiring resources or protecting itself from being shut down. If this AI’s goals do not fully reflect humanity’s, it might need to harm humanity to acquire more resources or prevent itself from being shut down, ultimately to better achieve its goal. He concludes that AI poses a risk to mankind, however humble or «friendly» its stated goals might be.[208]
Political scientist Charles T. Rubin argues that «any sufficiently advanced benevolence may be indistinguishable from malevolence.» Humans should not assume machines or robots would treat us favorably because there is no a priori reason to believe that they would share our system of morality.[209]
The opinion of experts and industry insiders is mixed, with sizable fractions both concerned and unconcerned by risk from eventual superhumanly-capable AI.[210]
Stephen Hawking, Microsoft founder Bill Gates, history professor Yuval Noah Harari, and SpaceX founder Elon Musk have all expressed serious misgivings about the future of AI.[211]
Prominent tech titans including Peter Thiel (Amazon Web Services) and Musk have committed more than $1 billion to nonprofit companies that champion responsible AI development, such as OpenAI and the Future of Life Institute.[212]
Mark Zuckerberg (CEO, Facebook) has said that artificial intelligence is helpful in its current form and will continue to assist humans.[213]
Other experts argue is that the risks are far enough in the future to not be worth researching,
or that humans will be valuable from the perspective of a superintelligent machine.[214]
Rodney Brooks, in particular, has said that «malevolent» AI is still centuries away.[u]
Copyright
AI’s decisions making abilities raises the questions of legal responsibility and copyright status of created works. This issues are being refined in various jurisdictions.[216]
Ethical machines
Friendly AI are machines that have been designed from the beginning to minimize risks and to make choices that benefit humans. Eliezer Yudkowsky, who coined the term, argues that developing friendly AI should be a higher research priority: it may require a large investment and it must be completed before AI becomes an existential risk.[217]
Machines with intelligence have the potential to use their intelligence to make ethical decisions. The field of machine ethics provides machines with ethical principles and procedures for resolving ethical dilemmas.[218]
Machine ethics is also called machine morality, computational ethics or computational morality,[218]
and was founded at an AAAI symposium in 2005.[219]
Other approaches include Wendell Wallach’s «artificial moral agents»[220]
and Stuart J. Russell’s three principles for developing provably beneficial machines.[221]
Regulation
The regulation of artificial intelligence is the development of public sector policies and laws for promoting and regulating artificial intelligence (AI); it is therefore related to the broader regulation of algorithms.[222]
The regulatory and policy landscape for AI is an emerging issue in jurisdictions globally.[223]
Between 2016 and 2020, more than 30 countries adopted dedicated strategies for AI.[44]
Most EU member states had released national AI strategies, as had Canada, China, India, Japan, Mauritius, the Russian Federation, Saudi Arabia, United Arab Emirates, US and Vietnam. Others were in the process of elaborating their own AI strategy, including Bangladesh, Malaysia and Tunisia.[44]
The Global Partnership on Artificial Intelligence was launched in June 2020, stating a need for AI to be developed in accordance with human rights and democratic values, to ensure public confidence and trust in the technology.[44] Henry Kissinger, Eric Schmidt, and Daniel Huttenlocher published a joint statement in November 2021 calling for a government commission to regulate AI.[224]
In fiction
The word «robot» itself was coined by Karel Čapek in his 1921 play R.U.R., the title standing for «Rossum’s Universal Robots».
Thought-capable artificial beings have appeared as storytelling devices since antiquity,[15]
and have been a persistent theme in science fiction.[17]
A common trope in these works began with Mary Shelley’s Frankenstein, where a human creation becomes a threat to its masters. This includes such works as Arthur C. Clarke’s and Stanley Kubrick’s 2001: A Space Odyssey (both 1968), with HAL 9000, the murderous computer in charge of the Discovery One spaceship, as well as The Terminator (1984) and The Matrix (1999). In contrast, the rare loyal robots such as Gort from The Day the Earth Stood Still (1951) and Bishop from Aliens (1986) are less prominent in popular culture.[225]
Isaac Asimov introduced the Three Laws of Robotics in many books and stories, most notably the «Multivac» series about a super-intelligent computer of the same name. Asimov’s laws are often brought up during lay discussions of machine ethics;[226]
while almost all artificial intelligence researchers are familiar with Asimov’s laws through popular culture, they generally consider the laws useless for many reasons, one of which is their ambiguity.[227]
Transhumanism (the merging of humans and machines) is explored in the manga Ghost in the Shell and the science-fiction series Dune.
Several works use AI to force us to confront the fundamental question of what makes us human, showing us artificial beings that have the ability to feel, and thus to suffer. This appears in Karel Čapek’s R.U.R., the films A.I. Artificial Intelligence and Ex Machina, as well as the novel Do Androids Dream of Electric Sheep?, by Philip K. Dick. Dick considers the idea that our understanding of human subjectivity is altered by technology created with artificial intelligence.[228]
Scientific diplomacy
[relevant?]
Warfare
As technology and research evolve and the world enters the third revolution of warfare following gunpowder and nuclear weapons, the artificial intelligence arms race ensues between the United States, China, and Russia, three countries with the world’s top five highest military budgets.[229] Intentions of being a world leader in AI research by 2030[230] have been declared by China’s leader Xi Jinping, and President Putin of Russia has stated that «Whoever becomes the leader in this sphere will become the ruler of the world».[231] If Russia were to become the leader in AI research, President Putin has stated Russia’s intent to share some of their research with the world so as to not monopolize the field,[231] similar to their current sharing of nuclear technologies, maintaining science diplomacy relations. The United States, China, and Russia, are some examples of countries that have taken their stances toward military artificial intelligence since as early as 2014, having established military programs to develop cyber weapons, control lethal autonomous weapons, and drones that can be used for surveillance.
Russo-Ukrainian War
President Putin announced that artificial intelligence is the future for all mankind [231] and recognizes the power and opportunities that the development and deployment of lethal autonomous weapons AI technology can hold in warfare and homeland security, as well as its threats. President Putin’s prediction that future wars will be fought using AI has started to come to fruition to an extent after Russia invaded Ukraine on 24 February 2022. The Ukrainian military is making use of the Turkish Bayraktar TB2-drones[232] that still require human operation to deploy laser-guided bombs but can take off, land, and cruise autonomously. Ukraine has also been using Switchblade drones supplied by the US and receiving information gathering by the United States’s own surveillance operations regarding battlefield intelligence and national security about Russia.[233] Similarly, Russia can use AI to help analyze battlefield data from surveillance footage taken by drones. Reports and images show that Russia’s military has deployed KUB- BLA suicide drones [234] into Ukraine, with speculations of intentions to assassinate Ukrainian President Volodymyr Zelenskyy.
Warfare regulations
As research in the AI realm progresses, there is pushback about the use of AI from the Campaign to Stop Killer Robots and world technology leaders have sent a petition[235] to the United Nations calling for new regulations on the development and use of AI technologies in 2017, including a ban on the use of lethal autonomous weapons due to ethical concerns for innocent civilian populations.
Cybersecurity
With the ever evolving cyber-attacks and generation of devices, AI can be used for threat detection and more effective response by risk prioritization. With this tool, some challenges are also presented such as privacy, informed consent, and responsible use.[236] According to CISA, the cyberspace is difficult to secure for the following factors: the ability of malicious actors to operate from anywhere in the world, the linkages between cyberspace and physical systems, and the difficulty of reducing vulnerabilities and consequences in complex cyber networks.[237] With the increased technological advances of the world, the risk for wide scale consequential events rises. Paradoxically, the ability to protect information and create a line of communication between the scientific and diplomatic community thrives. The role of cybersecurity in diplomacy has become increasingly relevant, creating the term of cyber diplomacy – which is not uniformly defined and not synonymous with cyber defence.[238] Many nations have developed unique approaches to scientific diplomacy in cyberspace.
Czech Republic’s approach
Dating back to 2011, when the Czech National Security Authority (NSA) was appointed as the national authority for the cyber agenda. The role of cyber diplomacy strengthened in 2017 when the Czech Ministry of Foreign Affairs (MFA) detected a serious cyber campaign directed against its own computer networks.[239] In 2016, three cyber diplomats were deployed to Washington, D.C., Brussels and Tel Aviv, with the goal of establishing active international cooperation focused on engagement with the EU and NATO. The main agenda for these scientific diplomacy efforts is to bolster research on artificial intelligence and how it can be used in cybersecurity research, development, and overall consumer trust.[240] CzechInvest is a key stakeholder in scientific diplomacy and cybersecurity. For example, in September 2018, they organized a mission to Canada in September 2018 with a special focus on artificial intelligence. The main goal of this particular mission was a promotional effort on behalf of Prague, attempting to establish it as a future knowledge hub for the industry for interested Canadian firms.[241]
Germany’s approach
Cybersecurity is recognized as a governmental task, dividing into three ministries of responsibility: the Federal Ministry of the Interior, the Federal Ministry of Defence, and the Federal Foreign Office.[242] These distinctions promoted the creation of various institutions, such as The German National Office for Information Security, The National Cyberdefence Centre, The German National Cyber Security Council, and The Cyber and Information Domain Service.[240] In 2018, a new strategy for artificial intelligence was established by the German government, with the creation of a German-French virtual research and innovation network,[243] holding opportunity for research expansion into cybersecurity.
European Union’s approach
The adoption of The Cybersecurity Strategy of the European Union – An Open, Safe and Secure Cyberspace document in 2013 by the European commission[240] pushed forth cybersecurity efforts integrated with scientific diplomacy and artificial intelligence. Efforts are strong, as the EU funds various programs and institutions in the effort to bring science to diplomacy and bring diplomacy to science. Some examples are the cyber security programme Competence Research Innovation (CONCORDIA), which brings together 14 member states,[244] and Cybersecurity for Europe (CSE), which brings together 43 partners involving 20 member states.[245] In addition, The European Network of Cybersecurity Centres and Competence Hub for Innovation and Operations (ECHO) gathers 30 partners with 15 member states[246] and SPARTA gathers 44 partners involving 14 member states.[247] These efforts reflect the overall goals of the EU, to innovate cybersecurity for defense and protection, establish a highly integrated cyberspace among many nations, and further contribute to the security of artificial intelligence.[240]
Russo-Ukrainian War
With the 2022 invasion of Ukraine, there has been a rise in malicious cyber activity against the United States,[248] Ukraine, and Russia. A prominent and rare documented use of artificial intelligence in conflict is on behalf of Ukraine, using facial recognition software to uncover Russian assailants and identify Ukrainians killed in the ongoing war.[249] Though these governmental figures are not primarily focused on scientific and cyber diplomacy, other institutions are commenting on the use of artificial intelligence in cybersecurity with that focus. For example, Georgetown University’s Center for Security and Emerging Technology (CSET) has the Cyber-AI Project, with one goal being to attract policymakers’ attention to the growing body of academic research, which exposes the exploitive consequences of AI and machine-learning (ML) algorithms.[250] This vulnerability can be a plausible explanation as to why Russia is not engaging in the use of AI in conflict per, Andrew Lohn, a senior fellow at CSET. In addition to use on the battlefield, AI is being used by the Pentagon to analyze data from the war, analyzing to strengthen cybersecurity and warfare intelligence for the United States.[233][251]
Election security
As artificial intelligence grows and the overwhelming amount of news portrayed through cyberspace expands, it is becoming extremely overwhelming for a voter to know what to believe. There are many intelligent codes, referred to as bots, written to portray people on social media with the goal of spreading misinformation.[252] The 2016 US election is a victim of such actions. During the Hillary Clinton and Donald Trump campaign, artificial intelligent bots from Russia were spreading misinformation about the candidates in order to help the Trump campaign.[253] Analysts concluded that approximately 19% of Twitter tweets centered around the 2016 election were detected to come from bots.[253] YouTube in recent years has been used to spread political information as well. Although there is no proof that the platform attempts to manipulate its viewers opinions, Youtubes AI algorithm recommends videos of similar variety.[254] If a person begins to research right wing political podcasts, then YouTube’s algorithm will recommend more right wing videos.[255] The uprising in a program called Deepfake, a software used to replicate someone’s face and words, has also shown its potential threat. In 2018 a Deepfake video of Barack Obama was released saying words he claims to have never said.[256] While in a national election a Deepfake will quickly be debunked, the software has the capability to heavily sway a smaller local election. This tool holds a lot of potential for spreading misinformation and is monitored with great attention.[257] Although it may be seen as a tool used for harm, AI can help enhance election campaigns as well. AI bots can be programed to target articles with known misinformation. The bots can then indicate what is being misinformed to help shine light on the truth. AI can also be used to inform a person where each parts stands on a certain topic such as healthcare or climate change.[258] The political leaders of a nation have heavy sway on international affairs. Thus, a political leader with a lack of interest for international collaborative scientific advancement can have a negative impact in the scientific diplomacy of that nation[259]
Future of work
Facial recognition
The use of artificial intelligence (AI) has subtly grown to become part of everyday life. It is used every day in facial recognition software. It is the first measure of security for many companies in the form of a biometric authentication. This means of authentication allows even the most official organizations such as the United States Internal Revenue Service to verify a person’s identity [260] via a database generated from machine learning. As of the year 2022, the United States IRS requires those who do not undergo a live interview with an agent to complete a biometric verification of their identity via ID.me’s facial recognition tool.[260]
AI and school
In Japan and South Korea, artificial intelligence software is used in the instruction of English language via the company Riiid.[261] Riiid is a Korean education company working alongside Japan to give students the means to learn and use their English communication skills via engaging with artificial intelligence in a live chat.[261] Riid is not the only company to do this. American company Duolingo is well known for their automated teaching of 41 languages. Babbel, a German language learning program, also uses artificial intelligence in its teaching automation, allowing for European students to learn vital communication skills needed in social, economic, and diplomatic settings. Artificial intelligence will also automate the routine tasks that teachers need to do such as grading, taking attendance, and handling routine student inquiries.[262] This enables the teacher to carry on with the complexities of teaching that an automated machine cannot handle. These include creating exams, explaining complex material in a way that will benefit students individually and handling unique questions from students.
AI and medicine
Unlike the human brain, which possess generalized intelligence, the specialized intelligence of AI can serve as a means of support to physicians internationally. The medical field has a diverse and profound amount of data in which AI can employ to generate a predictive diagnosis. Researchers at an Oxford hospital have developed artificial intelligence that can diagnose heart scans for heart disease and cancer.[263] This artificial intelligence can pick up diminutive details in the scans that doctors may miss. As such, artificial intelligence in medicine will better the industry, giving doctors the means to precisely diagnose their patients using the tools available. The artificial intelligence algorithms will also be used to further improve diagnosis over time, via an application of machine learning called precision medicine.[264] Furthermore, the narrow application of artificial intelligence can use «deep learning» in order to improve medical image analysis. In radiology imaging, AI uses deep learning algorithms to identify potentially cancerous lesions which is an important process assisting in early diagnosis.[265]
AI in business
Data analysis is a fundamental property of artificial intelligence that enables it to be used in every facet of life from search results to the way people buy product. According to NewVantage Partners,[266] over 90% of top businesses have ongoing investments in artificial intelligence. According to IBM, one of the world’s leaders in technology, 45% of respondents from companies with over 1,000 employees have adopted AI.[267] Recent data shows that the business market [268] for artificial intelligence during the year 2020 was valued at $51.08 billion. The business market for artificial intelligence is projected to be over $640.3 billion by the year 2028.[268] To prevent harm, AI-deploying organizations need to play a central role in creating and deploying trustworthy AI in line with the principles of trustworthy AI,[269] and take accountability to mitigate the risks.[270]
Business and diplomacy
With the exponential surge of artificial technology and communication, the distribution of one’s ideals and values has been evident in daily life. Digital information is spread via communication apps such as Whatsapp, Facebook/Meta, Snapchat, Instagram and Twitter. However, it is known that these sites relay specific information corresponding to data analysis. If a right-winged individual were to do a google search, Google’s algorithms would target that individual and relay data pertinent to that target audience. US President Bill Clinton noted in 2000:»In the new century, liberty will spread by cell phone and cable modem. […] We know how much the Internet has changed America, and we are already an open society.[271] However, when the private sector uses artificial intelligence to gather data, a shift in power from the state to the private sector may be seen. This shift in power, specifically in large technological corporations, could profoundly change how diplomacy functions in society. The rise in digital technology and usage of artificial technology enabled the private sector to gather immense data on the public, which is then further categorized by race, location, age, gender, etc.[272] The New York Times calculates that «the ten largest tech firms, which have become gatekeepers in commerce, finance, entertainment and communications, now have a combined market capitalization of more than $10 trillion. In gross domestic product terms, that would rank them as the world’s third-largest economy.»[273] Beyond the general lobbying of congressmen/congresswomen, companies such as Facebook/Meta or Google use collected data in order to reach their intended audiences with targeted information.[273]
AI and foreign policy
[relevant?]
Multiple nations around the globe employ artificial intelligence to assist with their foreign policy decisions. The Chinese Department of External Security Affairs – under the Ministry of Foreign Affairs – uses AI to review almost all its foreign investment projects for risk mitigation.[274] The government of China plans to use artificial intelligence in its $900 billion global infrastructure development plan, called the «Belt and Road Initiative» for political, economic, and environmental risk alleviation.[275]
Over 200 applications of artificial intelligence are being used by over 46 United Nations agencies, in sectors ranging from health care dealing with issues such as combating COVID-19 to smart agriculture, to assist the UN in political and diplomatic relations.[276] One example is the use of AI by the UN Global Pulse program to model the effect of the spread of COVID-19 on internally displaced people (IDP) and refugee settlements to assist them in creating an appropriate global health policy.[277][278]
Novel AI tools such as remote sensing can also be employed by diplomats for collecting and analyzing data and near-real-time tracking of objects such as troop or refugee movements along borders in violent conflict zones.[277][279]
Artificial intelligence can be used to mitigate vital cross-national diplomatic talks to prevent translation errors caused by human translators.[280] A major example is the 2021 Anchorage meetings held between US and China aimed at stabilizing foreign relations, only for it to have the opposite effect, increasing tension and aggressiveness between the two nations, due to translation errors caused by human translators.[281] In the meeting, when United States National Security Advisor to President Joe Biden, Jacob Jeremiah Sullivan stated, «We do not seek conflict, but we welcome stiff competition and we will always stand up for our principles, for our people, and for our friends», it was mistranslated into Chinese as «we will face competition between us, and will present our stance in a very clear manner», adding an aggressive tone to the speech.[281] AI’s ability for fast and efficient natural language processing and real-time translation and transliteration makes it an important tool for foreign-policy communication between nations and prevents unintended mistranslation.[282]
See also
- A.I. Rising
- AI alignment – Issue of ensuring beneficial AI
- Artificial intelligence arms race – Arms race for the most advanced AI-related technologies
- Artificial philosophy
- Behavior selection algorithm – Algorithm that selects actions for intelligent agents
- Business process automation
- Case-based reasoning – Process of solving new problems based on the solutions of similar past problems
- Emergent algorithm
- Female gendering of AI technologies – Design of digital assistants as female
- Glossary of artificial intelligence – List of definitions of terms and concepts commonly used in the study of artificial intelligence
- Robotic process automation – Form of business process automation technology
- Synthetic intelligence – Alternate term for or form of artificial intelligence
- Universal basic income – Welfare system of unconditional income
- Weak artificial intelligence – Form of artificial intelligence
- Operations research – Discipline concerning the application of advanced analytical methods
Explanatory notes
- ^ a b This list of intelligent traits is based on the topics covered by the major AI textbooks, including: Russell & Norvig (2003), Luger & Stubblefield (2004), Poole, Mackworth & Goebel (1998) and Nilsson (1998)
- ^ This statement comes from the proposal for the Dartmouth workshop of 1956, which reads: «Every aspect of learning or any other feature of intelligence can be so precisely described that a machine can be made to simulate it.»[13]
- ^ Russel and Norvig note in the textbook Artificial Intelligence: A Modern Approach (4th ed.), section 1.5:
«In the longer term, we face the difficult problem of controlling superintelligent AI systems that may evolve in unpredictable ways.» while referring to computer scientists, philosophers, and technologists. - ^
Daniel Crevier wrote «the conference is generally recognized as the official birthdate of the new science.»[23] Russell and Norvifg call the conference «the birth of artificial intelligence.»[24] - ^
Russell and Norvig wrote «for the next 20 years the field would be dominated by these people and their students.»[24] - ^
Russell and Norvig wrote «it was astonishing whenever a computer did anything kind of smartish».[26] - ^
The programs described are Arthur Samuel’s checkers program for the IBM 701, Daniel Bobrow’s STUDENT, Newell and Simon’s Logic Theorist and Terry Winograd’s SHRDLU. - ^
Embodied approaches to AI[36] were championed by Hans Moravec[37] and Rodney Brooks[38] and went by many names: Nouvelle AI,[38] Developmental robotics,[39]
situated AI, behavior-based AI as well as others. A similar movement in cognitive science was the embodied mind thesis. - ^
Clark wrote: «After a half-decade of quiet breakthroughs in artificial intelligence, 2015 has been a landmark year. Computers are smarter and learning faster than ever.»[10] - ^ Alan Turing discussed the centrality of learning as early as 1950, in his classic paper «Computing Machinery and Intelligence».[62] In 1956, at the original Dartmouth AI summer conference, Ray Solomonoff wrote a report on unsupervised probabilistic machine learning: «An Inductive Inference Machine».[63]
- ^ This is a form of Tom Mitchell’s widely quoted definition of machine learning: «A computer program is set to learn from an experience E with respect to some task T and some performance measure P if its performance on T as measured by P improves with experience E.»[64]
- ^
Alan Turing suggested in «Computing Machinery and Intelligence» that a «thinking machine» would need to be educated like a child.[62] Developmental robotics is a modern version of the idea.[39] - ^
Compared with symbolic logic, formal Bayesian inference is computationally expensive. For inference to be tractable, most observations must be conditionally independent of one another. AdSense uses a Bayesian network with over 300 million edges to learn which ads to serve.[103] - ^ Expectation-maximization, one of the most popular algorithms in machine learning, allows clustering in the presence of unknown latent variables.[105]
- ^
The Smithsonian reports: «Pluribus has bested poker pros in a series of six-player no-limit Texas Hold’em games, reaching a milestone in artificial intelligence research. It is the first bot to beat humans in a complex multiplayer competition.»[147] - ^ See Problem of other minds
- ^ Nils Nilsson wrote in 1983: «Simply put, there is wide disagreement in the field about what AI is all about.»[165]
- ^
Daniel Crevier wrote that «time has proven the accuracy and perceptiveness of some of Dreyfus’s comments. Had he formulated them less aggressively, constructive actions they suggested might have been taken much earlier.»[170] - ^
Searle presented this definition of «Strong AI» in 1999.[181] Searle’s original formulation was «The appropriately programmed computer really is a mind, in the sense that computers given the right programs can be literally said to understand and have other cognitive states.»[182] Strong AI is defined similarly by Russell and Norvig: «The assertion that machines could possibly act intelligently (or, perhaps better, act as if they were intelligent) is called the ‘weak AI’ hypothesis by philosophers, and the assertion that machines that do so are actually thinking (as opposed to simulating thinking) is called the ‘strong AI’ hypothesis.»[177] - ^ See table 4; 9% is both the OECD average and the US average.[195]
- ^ Rodney Brooks writes, «I think it is a mistake to be worrying about us developing malevolent AI anytime in the next few hundred years. I think the worry stems from a fundamental error in not distinguishing the difference between the very real recent advances in a particular aspect of AI and the enormity and complexity of building sentient volitional intelligence.»[215]
References
- ^ «artificial intelligence, n. : Oxford English Dictionary». www.oed.com. Archived from the original on 5 November 2022. Retrieved 5 November 2022.
- ^ Google (2016).
- ^ McCorduck (2004), p. 204.
- ^ Ashok83 (2019).
- ^ Schank (1991), p. 38.
- ^ Crevier (1993), p. 109.
- ^ a b c
Funding initiatives in the early 80s: Fifth Generation Project (Japan), Alvey (UK), Microelectronics and Computer Technology Corporation (US), Strategic Computing Initiative (US):- McCorduck (2004, pp. 426–441)
- Crevier (1993, pp. 161–162, 197–203, 211, 240)
- Russell & Norvig (2003, p. 24)
- NRC (1999, pp. 210–211)
- Newquist (1994, pp. 235–248)
- ^ a b
First AI Winter, Lighthill report, Mansfield Amendment- Crevier (1993, pp. 115–117)
- Russell & Norvig (2003, p. 22)
- NRC (1999, pp. 212–213)
- Howe (1994)
- Newquist (1994, pp. 189–201)
- ^ a b
Second AI Winter:- McCorduck (2004, pp. 430–435)
- Crevier (1993, pp. 209–210)
- NRC (1999, pp. 214–216)
- Newquist (1994, pp. 301–318)
- ^ a b c d Clark (2015b).
- ^ a b
AI widely used in late 1990s:- Russell & Norvig (2003, p. 28)
- Kurzweil (2005, p. 265)
- NRC (1999, pp. 216–222)
- Newquist (1994, pp. 189–201)
- ^ a b
Pennachin & Goertzel (2007); Roberts (2016) - ^ McCarthy et al. (1955).
- ^ Newquist (1994), pp. 45–53.
- ^ a b
AI in myth:- McCorduck (2004, pp. 4–5)
- Russell & Norvig (2003, p. 939)
- ^ McCorduck (2004), pp. 17–25.
- ^ a b McCorduck (2004), pp. 340–400.
- ^ Berlinski (2000).
- ^
AI’s immediate precursors:- McCorduck (2004, pp. 51–107)
- Crevier (1993, pp. 27–32)
- Russell & Norvig (2003, pp. 15, 940)
- Moravec (1988, p. 3)
- ^ Russell & Norvig (2009), p. 16.
- ^ Manyika 2022, p. 9.
- ^ Manyika 2022, p. 10.
- ^ Crevier (1993), pp. 47–49.
- ^ a b Russell & Norvig (2003), p. 17.
- ^
Dartmouth workshop:- Russell & Norvig (2003, p. 17)
- McCorduck (2004, pp. 111–136)
- NRC (1999, pp. 200–201)
The proposal:
- McCarthy et al. (1955)
- ^ Russell & Norvig (2003), p. 18.
- ^
Successful Symbolic AI programs:- McCorduck (2004, pp. 243–252)
- Crevier (1993, pp. 52–107)
- Moravec (1988, p. 9)
- Russell & Norvig (2003, pp. 18–21)
- ^
AI heavily funded in 1960s:- McCorduck (2004, p. 131)
- Crevier (1993, pp. 51, 64–65)
- NRC (1999, pp. 204–205)
- ^ Howe (1994).
- ^ Newquist (1994), pp. 86–86.
- ^
Simon (1965, p. 96) quoted in Crevier (1993, p. 109) - ^
Minsky (1967, p. 2) quoted in Crevier (1993, p. 109) - ^ Lighthill (1973).
- ^
Expert systems:- Russell & Norvig (2003, pp. 22–24)
- Luger & Stubblefield (2004, pp. 227–331)
- Nilsson (1998, chpt. 17.4)
- McCorduck (2004, pp. 327–335, 434–435)
- Crevier (1993, pp. 145–62, 197–203)
- Newquist (1994, pp. 155–183)
- ^ Nilsson (1998), p. 7.
- ^ McCorduck (2004), pp. 454–462.
- ^ Moravec (1988).
- ^ a b Brooks (1990).
- ^ a b
Developmental robotics:- Weng et al. (2001)
- Lungarella et al. (2003)
- Asada et al. (2009)
- Oudeyer (2010)
- ^
Revival of connectionism:- Crevier (1993, pp. 214–215)
- Russell & Norvig (2003, p. 25)
- ^
Formal and narrow methods adopted in the 1990s:- Russell & Norvig (2003, pp. 25–26)
- McCorduck (2004, pp. 486–487)
- ^ McKinsey (2018).
- ^ MIT Sloan Management Review (2018); Lorica (2017)
- ^ a b c d UNESCO (2021).
- ^
Problem solving, puzzle solving, game playing and deduction:- Russell & Norvig (2003, chpt. 3–9)
- Poole, Mackworth & Goebel (1998, chpt. 2,3,7,9)
- Luger & Stubblefield (2004, chpt. 3,4,6,8)
- Nilsson (1998, chpt. 7–12)
- ^
Uncertain reasoning:- Russell & Norvig (2003, pp. 452–644)
- Poole, Mackworth & Goebel (1998, pp. 345–395)
- Luger & Stubblefield (2004, pp. 333–381)
- Nilsson (1998, chpt. 19)
- ^ a b c
Intractability and efficiency and the combinatorial explosion:- Russell & Norvig (2003, pp. 9, 21–22)
- ^ a b c
Psychological evidence of the prevalence sub-symbolic reasoning and knowledge:- Kahneman (2011)
- Wason & Shapiro (1966)
- Kahneman, Slovic & Tversky (1982)
- Dreyfus & Dreyfus (1986)
- ^
Knowledge representation and knowledge engineering:- Russell & Norvig (2003, pp. 260–266, 320–363)
- Poole, Mackworth & Goebel (1998, pp. 23–46, 69–81, 169–233, 235–277, 281–298, 319–345)
- Luger & Stubblefield (2004, pp. 227–243),
- Nilsson (1998, chpt. 17.1–17.4, 18)
- ^ Russell & Norvig (2003), pp. 320–328.
- ^ a b c
Representing categories and relations: Semantic networks, description logics, inheritance (including frames and scripts):- Russell & Norvig (2003, pp. 349–354),
- Poole, Mackworth & Goebel (1998, pp. 174–177),
- Luger & Stubblefield (2004, pp. 248–258),
- Nilsson (1998, chpt. 18.3)
- ^ a b Representing events and time:Situation calculus, event calculus, fluent calculus (including solving the frame problem):
- Russell & Norvig (2003, pp. 328–341),
- Poole, Mackworth & Goebel (1998, pp. 281–298),
- Nilsson (1998, chpt. 18.2)
- ^ a b
Causal calculus:- Poole, Mackworth & Goebel (1998, pp. 335–337)
- ^ a b
Representing knowledge about knowledge: Belief calculus, modal logics:- Russell & Norvig (2003, pp. 341–344),
- Poole, Mackworth & Goebel (1998, pp. 275–277)
- ^ a b
Default reasoning, Frame problem, default logic, non-monotonic logics, circumscription, closed world assumption, abduction:- Russell & Norvig (2003, pp. 354–360)
- Poole, Mackworth & Goebel (1998, pp. 248–256, 323–335)
- Luger & Stubblefield (2004, pp. 335–363)
- Nilsson (1998, ~18.3.3)
(Poole et al. places abduction under «default reasoning». Luger et al. places this under «uncertain reasoning»).
- ^ a b
Breadth of commonsense knowledge:- Russell & Norvig (2003, p. 21),
- Crevier (1993, pp. 113–114),
- Moravec (1988, p. 13),
- Lenat & Guha (1989, Introduction)
- ^ Smoliar & Zhang (1994).
- ^ Neumann & Möller (2008).
- ^ Kuperman, Reichley & Bailey (2006).
- ^ McGarry (2005).
- ^ Bertini, Del Bimbo & Torniai (2006).
- ^ a b Turing (1950).
- ^ Solomonoff (1956).
- ^ Russell & Norvig (2003), pp. 649–788.
- ^
Learning:- Russell & Norvig (2003, pp. 649–788)
- Poole, Mackworth & Goebel (1998, pp. 397–438)
- Luger & Stubblefield (2004, pp. 385–542)
- Nilsson (1998, chpt. 3.3, 10.3, 17.5, 20)
- ^
Reinforcement learning:- Russell & Norvig (2003, pp. 763–788)
- Luger & Stubblefield (2004, pp. 442–449)
- ^ The Economist (2016).
- ^ Jordan & Mitchell (2015).
- ^
Natural language processing (NLP):- Russell & Norvig (2003, pp. 790–831)
- Poole, Mackworth & Goebel (1998, pp. 91–104)
- Luger & Stubblefield (2004, pp. 591–632)
- ^
Applications of NLP:- Russell & Norvig (2003, pp. 840–857)
- Luger & Stubblefield (2004, pp. 623–630)
- ^ Modern statistical approaches to NLP:
- Cambria & White (2014)
- ^ Vincent (2019).
- ^
Machine perception:- Russell & Norvig (2003, pp. 537–581, 863–898)
- Nilsson (1998, ~chpt. 6)
- ^
Speech recognition:- Russell & Norvig (2003, pp. 568–578)
- ^
Object recognition:- Russell & Norvig (2003, pp. 885–892)
- ^
Computer vision:- Russell & Norvig (2003, pp. 863–898)
- Nilsson (1998, chpt. 6)
- ^ MIT AIL (2014).
- ^
Affective computing:- Thro (1993)
- Edelson (1991)
- Tao & Tan (2005)
- Scassellati (2002)
- ^ Waddell (2018).
- ^ Poria et al. (2017).
- ^
The Society of Mind:- Minsky (1986)
Moravec’s «golden spike»:
- Moravec (1988, p. 20)
Multi-agent systems, hybrid intelligent systems, agent architectures, cognitive architecture:
- Russell & Norvig (2003, pp. 27, 932, 970–972)
- Nilsson (1998, chpt. 25)
- ^ Domingos (2015), Chpt. 9.
- ^
Artificial brain as an approach to AGI:- Russell & Norvig (2003, p. 957)
- Crevier (1993, pp. 271 & 279)
- Goertzel et al. (2010)
A few of the people who make some form of the argument:
- Moravec (1988, p. 20)
- Kurzweil (2005, p. 262)
- Hawkins & Blakeslee (2005)
- ^
Search algorithms:- Russell & Norvig (2003, pp. 59–189)
- Poole, Mackworth & Goebel (1998, pp. 113–163)
- Luger & Stubblefield (2004, pp. 79–164, 193–219)
- Nilsson (1998, chpt. 7–12)
- ^ Forward chaining, backward chaining, Horn clauses, and logical deduction as search:
- Russell & Norvig (2003, pp. 217–225, 280–294)
- Poole, Mackworth & Goebel (1998, pp. ~46–52)
- Luger & Stubblefield (2004, pp. 62–73)
- Nilsson (1998, chpt. 4.2, 7.2)
- ^
State space search and planning:- Russell & Norvig (2003, pp. 382–387)
- Poole, Mackworth & Goebel (1998, pp. 298–305)
- Nilsson (1998, chpt. 10.1–2)
- ^ Moving and configuration space:
- Russell & Norvig (2003, pp. 916–932)
- ^ Uninformed searches (breadth first search, depth-first search and general state space search):
- Russell & Norvig (2003, pp. 59–93)
- Poole, Mackworth & Goebel (1998, pp. 113–132)
- Luger & Stubblefield (2004, pp. 79–121)
- Nilsson (1998, chpt.
- ^
Heuristic or informed searches (e.g., greedy best first and A*):- Russell & Norvig (2003, pp. 94–109)
- Poole, Mackworth & Goebel (1998, pp. pp. 132–147)
- Poole & Mackworth (2017, Section 3.6)
- Luger & Stubblefield (2004, pp. 133–150)
- ^ Tecuci (2012).
- ^ Optimization searches:
- Russell & Norvig (2003, pp. 110–116, 120–129)
- Poole, Mackworth & Goebel (1998, pp. 56–163)
- Luger & Stubblefield (2004, pp. 127–133)
- ^
Genetic programming and genetic algorithms:- Luger & Stubblefield (2004, pp. 509–530)
- Nilsson (1998, chpt. 4.2)
- ^
Artificial life and society based learning:- Luger & Stubblefield (2004, pp. 530–541)
- Merkle & Middendorf (2013)
- ^
Logic:- Russell & Norvig (2003, pp. 194–310),
- Luger & Stubblefield (2004, pp. 35–77),
- Nilsson (1998, chpt. 13–16)
- ^
Satplan:- Russell & Norvig (2003, pp. 402–407),
- Poole, Mackworth & Goebel (1998, pp. 300–301),
- Nilsson (1998, chpt. 21)
- ^
Explanation based learning, relevance based learning, inductive logic programming, case based reasoning:- Russell & Norvig (2003, pp. 678–710),
- Poole, Mackworth & Goebel (1998, pp. 414–416),
- Luger & Stubblefield (2004, pp. ~422–442),
- Nilsson (1998, chpt. 10.3, 17.5)
- ^
Propositional logic:- Russell & Norvig (2003, pp. 204–233),
- Luger & Stubblefield (2004, pp. 45–50)
- Nilsson (1998, chpt. 13)
- ^ First-order logic and features such as equality:
- Russell & Norvig (2003, pp. 240–310),
- Poole, Mackworth & Goebel (1998, pp. 268–275),
- Luger & Stubblefield (2004, pp. 50–62),
- Nilsson (1998, chpt. 15)
- ^
Fuzzy logic:- Russell & Norvig (2003, pp. 526–527)
- Scientific American (1999)
- ^ Abe, Jair Minoro; Nakamatsu, Kazumi (2009). «Multi-agent Systems and Paraconsistent Knowledge». Knowledge Processing and Decision Making in Agent-Based Systems. Studies in Computational Intelligence. Vol. 170. Springer Berlin Heidelberg. pp. 101–121. doi:10.1007/978-3-540-88049-3_5. eISSN 1860-9503. ISBN 978-3-540-88048-6. ISSN 1860-949X. Retrieved 2 August 2022.
- ^
Stochastic methods for uncertain reasoning:- Russell & Norvig (2003, pp. 462–644),
- Poole, Mackworth & Goebel (1998, pp. 345–395),
- Luger & Stubblefield (2004, pp. 165–191, 333–381),
- Nilsson (1998, chpt. 19)
- ^
Bayesian networks:- Russell & Norvig (2003, pp. 492–523),
- Poole, Mackworth & Goebel (1998, pp. 361–381),
- Luger & Stubblefield (2004, pp. ~182–190, ≈363–379),
- Nilsson (1998, chpt. 19.3–4)
- ^ Domingos (2015), chapter 6.
- ^
Bayesian inference algorithm:- Russell & Norvig (2003, pp. 504–519),
- Poole, Mackworth & Goebel (1998, pp. 361–381),
- Luger & Stubblefield (2004, pp. ~363–379),
- Nilsson (1998, chpt. 19.4 & 7)
- ^ Domingos (2015), p. 210.
- ^
Bayesian learning and the expectation-maximization algorithm:- Russell & Norvig (2003, pp. 712–724),
- Poole, Mackworth & Goebel (1998, pp. 424–433),
- Nilsson (1998, chpt. 20)
- Domingos (2015, p. 210)
- ^ Bayesian decision theory and Bayesian decision networks:
- Russell & Norvig (2003, pp. 597–600)
- ^ a b c Stochastic temporal models:
- Russell & Norvig (2003, pp. 537–581)
Dynamic Bayesian networks:
- Russell & Norvig (2003, pp. 551–557)
Hidden Markov model:
- (Russell & Norvig 2003, pp. 549–551)
Kalman filters:
- Russell & Norvig (2003, pp. 551–557)
- ^
decision theory and decision analysis:- Russell & Norvig (2003, pp. 584–597),
- Poole, Mackworth & Goebel (1998, pp. 381–394)
- ^
Information value theory:- Russell & Norvig (2003, pp. 600–604)
- ^ Markov decision processes and dynamic decision networks:
- Russell & Norvig (2003, pp. 613–631)
- ^ Game theory and mechanism design:
- Russell & Norvig (2003, pp. 631–643)
- ^
Statistical learning methods and classifiers:- Russell & Norvig (2003, pp. 712–754),
- Luger & Stubblefield (2004, pp. 453–541)
- ^
Decision tree:- Domingos (2015, p. 88)
- Russell & Norvig (2003, pp. 653–664),
- Poole, Mackworth & Goebel (1998, pp. 403–408),
- Luger & Stubblefield (2004, pp. 408–417)
- ^
K-nearest neighbor algorithm:- Domingos (2015, p. 187)
- Russell & Norvig (2003, pp. 733–736)
- ^
kernel methods such as the support vector machine:- Domingos (2015, p. 88)
- Russell & Norvig (2003, pp. 749–752)
Gaussian mixture model:
- Russell & Norvig (2003, pp. 725–727)
- ^ Domingos (2015), p. 152.
- ^
Naive Bayes classifier:- Domingos (2015, p. 152)
- Russell & Norvig (2003, p. 718)
- ^ a b
Neural networks:- Russell & Norvig (2003, pp. 736–748),
- Poole, Mackworth & Goebel (1998, pp. 408–414),
- Luger & Stubblefield (2004, pp. 453–505),
- Nilsson (1998, chpt. 3)
- Domingos (2015, Chapter 4)
- ^
Classifier performance:- van der Walt & Bernard (2006)
- Russell & Norvig (2009, 18.12: Learning from Examples: Summary)
- ^
Backpropagation:- Russell & Norvig (2003, pp. 744–748),
- Luger & Stubblefield (2004, pp. 467–474),
- Nilsson (1998, chpt. 3.3)
Paul Werbos’ introduction of backpropagation to AI:
- Werbos (1974); Werbos (1982)
Automatic differentiation, an essential precursor:
- Linnainmaa (1970); Griewank (2012)
- ^
Competitive learning, Hebbian coincidence learning, Hopfield networks and attractor networks:- Luger & Stubblefield (2004, pp. 474–505)
- ^
Feedforward neural networks, perceptrons and radial basis networks:- Russell & Norvig (2003, pp. 739–748, 758)
- Luger & Stubblefield (2004, pp. 458–467)
- ^ Schulz & Behnke (2012).
- ^
Deep learning:- Goodfellow, Bengio & Courville (2016)
- Hinton et al. (2016)
- Schmidhuber (2015)
- ^ Deng & Yu (2014), pp. 199–200.
- ^ Ciresan, Meier & Schmidhuber (2012).
- ^ Habibi (2017).
- ^ Fukushima (2007).
- ^
Recurrent neural networks, Hopfield nets:- Russell & Norvig (2003, p. 758)
- Luger & Stubblefield (2004, pp. 474–505)
- Schmidhuber (2015)
- ^ Schmidhuber (2015).
- ^
Werbos (1988);
Robinson & Fallside (1987);
Williams & Zipser (1994) - ^
Goodfellow, Bengio & Courville (2016);
Hochreiter (1991) - ^ Hochreiter & Schmidhuber (1997); Gers, Schraudolph & Schraudolph (2002)
- ^ Russell & Norvig (2009), p. 1.
- ^ European Commission (2020), p. 1.
- ^ CNN (2006).
- ^
Targeted advertising:- Russell & Norvig (2009, p. 1)
- Economist (2016)
- Lohr (2016)
- ^ Lohr (2016).
- ^ Smith (2016).
- ^ Rowinski (2013).
- ^ Frangoul (2019).
- ^ Brown (2019).
- ^ McCorduck (2004), pp. 480–483.
- ^ Markoff (2011).
- ^
Google (2016); BBC (2016) - ^ Solly (2019).
- ^ Bowling et al. (2015).
- ^ Sample (2017).
- ^ Anadiotis (2020).
- ^ Heath (2020).
- ^ Aletras et al. (2016).
- ^ «Going Nowhere Fast? Smart Traffic Lights Can Help Ease Gridlock». 18 May 2022.
- ^ «Intellectual Property and Frontier Technologies». WIPO.
- ^ a b «WIPO Technology Trends 2019 – Artificial Intelligence» (PDF). WIPO. 2019. Archived (PDF) from the original on 9 October 2022.
- ^ a b Turing (1950), p. 1.
- ^
Turing’s original publication of the Turing test in «Computing machinery and intelligence»:- Turing (1950)
Historical influence and philosophical implications:
- Haugeland (1985, pp. 6–9)
- Crevier (1993, p. 24)
- McCorduck (2004, pp. 70–71)
- Russell & Norvig (2021, pp. 2 and 984)
- ^ Turing (1950), Under «The Argument from Consciousness».
- ^ Russell & Norvig (2021), chpt. 2.
- ^ Russell & Norvig (2021), p. 3.
- ^ Maker (2006).
- ^ McCarthy 1999.
- ^ Minsky (1986).
- ^ «Artificial intelligence — Google Search». www.google.com. Retrieved 5 November 2022.
- ^ Nilsson (1983), p. 10.
- ^ Haugeland (1985), pp. 112–117.
- ^
Physical symbol system hypothesis:- Newell & Simon (1976, p. 116)
Historical significance:
- McCorduck (2004, p. 153)
- Russell & Norvig (2003, p. 18)
- ^
Moravec’s paradox:- Moravec (1988, pp. 15–16)
- Minsky (1986, p. 29)
- Pinker (2007, pp. 190–91)
- ^
Dreyfus’ critique of AI:- Dreyfus (1972)
- Dreyfus & Dreyfus (1986)
Historical significance and philosophical implications:
- Crevier (1993, pp. 120–132)
- McCorduck (2004, pp. 211–239)
- Russell & Norvig (2003, pp. 950–952)
- Fearn (2007, Chpt. 3)
- ^ Crevier (1993), p. 125.
- ^ Langley (2011).
- ^ Katz (2012).
- ^
Neats vs. scruffies, the historic debate:- McCorduck (2004, pp. 421–424, 486–489)
- Crevier (1993, p. 168)
- Nilsson (1983, pp. 10–11)
A classic example of the «scruffy» approach to intelligence:
- Minsky (1986)
A modern example of neat AI and its aspirations:
- Domingos (2015)
- ^ Russell & Norvig (2003), pp. 25–26.
- ^ Pennachin & Goertzel (2007).
- ^ a b Roberts (2016).
- ^ a b Russell & Norvig (2003), p. 947.
- ^ Chalmers (1995).
- ^ Dennett (1991).
- ^ Horst (2005).
- ^ Searle (1999).
- ^ Searle (1980), p. 1.
- ^
Searle’s Chinese room argument:- Searle (1980). Searle’s original presentation of the thought experiment.
- Searle (1999).
Discussion:
- Russell & Norvig (2003, pp. 958–960)
- McCorduck (2004, pp. 443–445)
- Crevier (1993, pp. 269–271)
- ^
Robot rights:- Russell & Norvig (2003, p. 964)
- BBC (2006)
- Maschafilm (2010) (the film Plug & Pray)
- ^ Evans (2015).
- ^ McCorduck (2004), pp. 19–25.
- ^ Henderson (2007).
- ^ Omohundro (2008).
- ^ Vinge (1993).
- ^ Russell & Norvig (2003), p. 963.
- ^
Transhumanism:- Moravec (1988)
- Kurzweil (2005)
- Russell & Norvig (2003, p. 963)
- ^
AI as evolution:- Edward Fredkin is quoted in McCorduck (2004, p. 401)
- Butler (1863)
- Dyson (1998)
- ^
Ford & Colvin (2015);
McGaughey (2018) - ^ IGM Chicago (2017).
- ^ Arntz, Gregory & Zierahn (2016), p. 33.
- ^
Lohr (2017);
Frey & Osborne (2017);
Arntz, Gregory & Zierahn (2016, p. 33) - ^ Morgenstern (2015).
- ^ Mahdawi (2017); Thompson (2014)
- ^ Harari (2018).
- ^
Weaponized AI:- Robitzski (2018)
- Sainato (2015)
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- ^ Goffrey (2008), p. 17.
- ^ Lipartito (2011, p. 36); Goodman & Flaxman (2017, p. 6)
- ^ Larson & Angwin (2016).
- ^ Dockrill, Peter, Robots With Flawed AI Make Sexist And Racist Decisions, Experiment Shows, Science Alert, 27 June 2022
- ^ Cellan-Jones (2014).
- ^ Bostrom (2014); Müller & Bostrom (2014); Bostrom (2015)
- ^ Rubin (2003).
- ^ Müller & Bostrom (2014).
- ^
Leaders’ concerns about the existential risks of AI:- Rawlinson (2015)
- Holley (2015)
- Gibbs (2014)
- Churm (2019)
- Sainato (2015)
- ^
Funding to mitigate risks of AI:- Post (2015)
- Del Prado (2015)
- Clark (2015a)
- FastCompany (2015)
- ^
Leaders who argue the benefits of AI outweigh the risks:- Thibodeau (2019)
- Bhardwaj (2018)
- ^
Arguments that AI is not an imminent risk:- Brooks (2014)
- Geist (2015)
- Madrigal (2015)
- Lee (2014)
- ^ Brooks (2014).
- ^ «Artificial intelligence and copyright». www.wipo.int. Retrieved 27 May 2022.
- ^ Yudkowsky (2008).
- ^ a b Anderson & Anderson (2011).
- ^ AAAI (2014).
- ^ Wallach (2010).
- ^ Russell (2019), p. 173.
- ^
Regulation of AI to mitigate risks:- Berryhill et al. (2019)
- Barfield & Pagallo (2018)
- Iphofen & Kritikos (2019)
- Wirtz, Weyerer & Geyer (2018)
- Buiten (2019)
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AI textbooks
These were the four the most widely used AI textbooks in 2008:
- Luger, George; Stubblefield, William (2004). Artificial Intelligence: Structures and Strategies for Complex Problem Solving (5th ed.). Benjamin/Cummings. ISBN 978-0-8053-4780-7. Archived from the original on 26 July 2020. Retrieved 17 December 2019.
- Nilsson, Nils (1998). Artificial Intelligence: A New Synthesis. Morgan Kaufmann. ISBN 978-1-55860-467-4. Archived from the original on 26 July 2020. Retrieved 18 November 2019.
- Russell, Stuart J.; Norvig, Peter (2003), Artificial Intelligence: A Modern Approach (2nd ed.), Upper Saddle River, New Jersey: Prentice Hall, ISBN 0-13-790395-2.
- Poole, David; Mackworth, Alan; Goebel, Randy (1998). Computational Intelligence: A Logical Approach. New York: Oxford University Press. ISBN 978-0-19-510270-3. Archived from the original on 26 July 2020. Retrieved 22 August 2020.
Later editions.
- Russell, Stuart J.; Norvig, Peter (2009). Artificial Intelligence: A Modern Approach (3rd ed.). Upper Saddle River, New Jersey: Prentice Hall. ISBN 978-0-13-604259-4..
- Poole, David; Mackworth, Alan (2017). Artificial Intelligence: Foundations of Computational Agents (2nd ed.). Cambridge University Press. ISBN 978-1-107-19539-4.
The two most widely used textbooks in 2021.Open Syllabus: Explorer
- Russell, Stuart J.; Norvig, Peter (2021). Artificial Intelligence: A Modern Approach (4th ed.). Hoboken: Pearson. ISBN 9780134610993. LCCN 20190474.
- Knight, Kevin; Rich, Elaine (1 January 2010). Artificial Intelligence (3rd ed.). Mc Graw Hill India. ISBN 9780070087705.
History of AI
- Crevier, Daniel (1993). AI: The Tumultuous Search for Artificial Intelligence. New York, NY: BasicBooks. ISBN 0-465-02997-3..
- McCorduck, Pamela (2004), Machines Who Think (2nd ed.), Natick, MA: A. K. Peters, Ltd., ISBN 1-56881-205-1.
- Newquist, HP (1994). The Brain Makers: Genius, Ego, And Greed In The Quest For Machines That Think. New York: Macmillan/SAMS. ISBN 978-0-672-30412-5.
- Nilsson, Nils (2009). The Quest for Artificial Intelligence: A History of Ideas and Achievements. New York: Cambridge University Press. ISBN 978-0-521-12293-1.
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Further reading
- Autor, David H., «Why Are There Still So Many Jobs? The History and Future of Workplace Automation» (2015) 29(3) Journal of Economic Perspectives 3.
- Boden, Margaret, Mind As Machine, Oxford University Press, 2006.
- Cukier, Kenneth, «Ready for Robots? How to Think about the Future of AI», Foreign Affairs, vol. 98, no. 4 (July/August 2019), pp. 192–98. George Dyson, historian of computing, writes (in what might be called «Dyson’s Law») that «Any system simple enough to be understandable will not be complicated enough to behave intelligently, while any system complicated enough to behave intelligently will be too complicated to understand.» (p. 197.) Computer scientist Alex Pentland writes: «Current AI machine-learning algorithms are, at their core, dead simple stupid. They work, but they work by brute force.» (p. 198.)
- Domingos, Pedro, «Our Digital Doubles: AI will serve our species, not control it», Scientific American, vol. 319, no. 3 (September 2018), pp. 88–93.
- Gopnik, Alison, «Making AI More Human: Artificial intelligence has staged a revival by starting to incorporate what we know about how children learn», Scientific American, vol. 316, no. 6 (June 2017), pp. 60–65.
- Halpern, Sue, «The Human Costs of AI» (review of Kate Crawford, Atlas of AI: Power, Politics, and the Planetary Costs of Artificial Intelligence, Yale University Press, 2021, 327 pp.; Simon Chesterman, We, the Robots?: Regulating Artificial Intelligence and the Limits of the Law, Cambridge University Press, 2021, 289 pp.; Keven Roose, Futureproof: 9 Rules for Humans in the Age of Automation, Random House, 217 pp.; Erik J. Larson, The Myth of Artificial Intelligence: Why Computers Can’t Think the Way We Do, Belknap Press / Harvard University Press, 312 pp.), The New York Review of Books, vol. LXVIII, no. 16 (21 October 2021), pp. 29–31. «AI training models can replicate entrenched social and cultural biases. […] Machines only know what they know from the data they have been given. [p. 30.] [A]rtificial general intelligence–machine-based intelligence that matches our own–is beyond the capacity of algorithmic machine learning… ‘Your brain is one piece in a broader system which includes your body, your environment, other humans, and culture as a whole.’ [E]ven machines that master the tasks they are trained to perform can’t jump domains. AIVA, for example, can’t drive a car even though it can write music (and wouldn’t even be able to do that without Bach and Beethoven [and other composers on which AIVA is trained]).» (p. 31.)
- Johnston, John (2008) The Allure of Machinic Life: Cybernetics, Artificial Life, and the New AI, MIT Press.
- Koch, Christof, «Proust among the Machines», Scientific American, vol. 321, no. 6 (December 2019), pp. 46–49. Christof Koch doubts the possibility of «intelligent» machines attaining consciousness, because «[e]ven the most sophisticated brain simulations are unlikely to produce conscious feelings.» (p. 48.) According to Koch, «Whether machines can become sentient [is important] for ethical reasons. If computers experience life through their own senses, they cease to be purely a means to an end determined by their usefulness to… humans. Per GNW [the Global Neuronal Workspace theory], they turn from mere objects into subjects… with a point of view…. Once computers’ cognitive abilities rival those of humanity, their impulse to push for legal and political rights will become irresistible—the right not to be deleted, not to have their memories wiped clean, not to suffer pain and degradation. The alternative, embodied by IIT [Integrated Information Theory], is that computers will remain only supersophisticated machinery, ghostlike empty shells, devoid of what we value most: the feeling of life itself.» (p. 49.)
- Marcus, Gary, «Am I Human?: Researchers need new ways to distinguish artificial intelligence from the natural kind», Scientific American, vol. 316, no. 3 (March 2017), pp. 58–63. A stumbling block to AI has been an incapacity for reliable disambiguation. An example is the «pronoun disambiguation problem»: a machine has no way of determining to whom or what a pronoun in a sentence refers. (p. 61.)
- Gary Marcus, «Artificial Confidence: Even the newest, buzziest systems of artificial general intelligence are stymmied by the same old problems», Scientific American, vol. 327, no. 4 (October 2022), pp. 42–45.
- E McGaughey, ‘Will Robots Automate Your Job Away? Full Employment, Basic Income, and Economic Democracy’ (2018) SSRN, part 2(3) Archived 24 May 2018 at the Wayback Machine.
- George Musser, «Artificial Imagination: How machines could learn creativity and common sense, among other human qualities», Scientific American, vol. 320, no. 5 (May 2019), pp. 58–63.
- Myers, Courtney Boyd ed. (2009). «The AI Report» Archived 29 July 2017 at the Wayback Machine. Forbes June 2009
- Raphael, Bertram (1976). The Thinking Computer. W.H. Freeman and Co. ISBN 978-0716707233. Archived from the original on 26 July 2020. Retrieved 22 August 2020.
- Scharre, Paul, «Killer Apps: The Real Dangers of an AI Arms Race», Foreign Affairs, vol. 98, no. 3 (May/June 2019), pp. 135–44. «Today’s AI technologies are powerful but unreliable. Rules-based systems cannot deal with circumstances their programmers did not anticipate. Learning systems are limited by the data on which they were trained. AI failures have already led to tragedy. Advanced autopilot features in cars, although they perform well in some circumstances, have driven cars without warning into trucks, concrete barriers, and parked cars. In the wrong situation, AI systems go from supersmart to superdumb in an instant. When an enemy is trying to manipulate and hack an AI system, the risks are even greater.» (p. 140.)
- Serenko, Alexander (2010). «The development of an AI journal ranking based on the revealed preference approach» (PDF). Journal of Informetrics. 4 (4): 447–59. doi:10.1016/j.joi.2010.04.001. Archived (PDF) from the original on 4 October 2013. Retrieved 24 August 2013.
- Serenko, Alexander; Michael Dohan (2011). «Comparing the expert survey and citation impact journal ranking methods: Example from the field of Artificial Intelligence» (PDF). Journal of Informetrics. 5 (4): 629–49. doi:10.1016/j.joi.2011.06.002. Archived (PDF) from the original on 4 October 2013. Retrieved 12 September 2013.
- Tom Simonite (29 December 2014). «2014 in Computing: Breakthroughs in Artificial Intelligence». MIT Technology Review. Archived from the original on 2 January 2015.
- Sun, R. & Bookman, L. (eds.), Computational Architectures: Integrating Neural and Symbolic Processes. Kluwer Academic Publishers, Needham, MA. 1994.
- Taylor, Paul, «Insanely Complicated, Hopelessly Inadequate» (review of Brian Cantwell Smith, The Promise of Artificial Intelligence: Reckoning and Judgment, MIT, 2019, ISBN 978-0262043045, 157 pp.; Gary Marcus and Ernest Davis, Rebooting AI: Building Artificial Intelligence We Can Trust, Ballantine, 2019, ISBN 978-1524748258, 304 pp.; Judea Pearl and Dana Mackenzie, The Book of Why: The New Science of Cause and Effect, Penguin, 2019, ISBN 978-0141982410, 418 pp.), London Review of Books, vol. 43, no. 2 (21 January 2021), pp. 37–39. Paul Taylor writes (p. 39): «Perhaps there is a limit to what a computer can do without knowing that it is manipulating imperfect representations of an external reality.»
- Tooze, Adam, «Democracy and Its Discontents», The New York Review of Books, vol. LXVI, no. 10 (6 June 2019), pp. 52–53, 56–57. «Democracy has no clear answer for the mindless operation of bureaucratic and technological power. We may indeed be witnessing its extension in the form of artificial intelligence and robotics. Likewise, after decades of dire warning, the environmental problem remains fundamentally unaddressed…. Bureaucratic overreach and environmental catastrophe are precisely the kinds of slow-moving existential challenges that democracies deal with very badly…. Finally, there is the threat du jour: corporations and the technologies they promote.» (pp. 56–57.)
External links
- «Artificial Intelligence». Internet Encyclopedia of Philosophy.
- Thomason, Richmond. «Logic and Artificial Intelligence». In Zalta, Edward N. (ed.). Stanford Encyclopedia of Philosophy.
- Artificial Intelligence. BBC Radio 4 discussion with John Agar, Alison Adam & Igor Aleksander (In Our Time, 8 December 2005).
Что скрывается за словосочетанием «искусственный интеллект» или AI (Artificial Intelligence), знает далеко не каждый. Большинство людей, вероятно, представляют себе ИИ как компьютер, который был запрограммирован на то, чтобы «думать» самостоятельно, принимать разумные решения и реагировать на раздражители. Эта идея не совсем верна. Никакой компьютер и никакая машина не могут действительно думать — потому что это требует наличия сознания, которого нет у «бездушной машины». Компьютер может делать только то, что скажет ему человек.
Кратко о программировании AI
Программирование искусственного интеллекта заключается не в обучении компьютера тому, как думать. Скорее, он будет запрограммирован так, чтобы обучаться и самостоятельно решать конкретные проблемы на основе своего опыта. Но и здесь речь идет не о собственном мышлении, а о подражании. Это также относится к решениям, которые принимает AI. Искусственный интеллект может взвешивать варианты, а затем делать выбор. Однако его выбор всегда будет исходить из тех параметров, которые были запрограммированы ранее.
Таким образом, искусственный интеллект может делать только то, что было предопределено для компьютера, но лучше, точнее и быстрее, чем человек. Кстати, если вы хотите научиться программировать, обратите внимание на нашу статью с советами для начинающих программистов.
Использование искусственного интеллекта
Искусственный интеллект уже используется во многих областях, например в сложных компьютерных играх и поисковых системах. При программировании AI важную роль играет комплекс дисциплин, а не только информатика или математика. Большое значение имеют философия, психология, неврология и лингвистика.
Искусственный интеллект разделяется на нейронный и символический (сильный и слабый). Первый пытается имитировать структуры и функции человеческого мозга. Последний ориентируется на соответствующую проблему и результат.
В повседневной жизни, например, искусственный интеллект программируется и используется в робототехнике. Он служит для управления производственными процессами или просто выполняет бытовые задачи. Искусственный интеллект также используется для визуализации. Самый популярный пример — распознавание лиц или отпечатков пальцев.
Еще один шаг в создании искусственного интеллекта — это системы, основанные на знаниях. Тогда в программу вводятся данные, связанные с программированием. Это позволяет искусственному интеллекту логично и самостоятельно давать ответы на заданные вопросы. Однако и эти «самостоятельные ответы» основаны только на тех знаниях, которыми изначально наделен искусственный интеллект.
Читайте также:
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Фото: pixabay.com
Как я свой первый ИИ писал +16
Из песочницы, C#, Unity
Рекомендация: подборка платных и бесплатных курсов разработки под Unity — https://katalog-kursov.ru/
Привет, Хабр. История моя берёт начало в январе 2019 года.
Мы с моей тимой геймдевелоперов решили взяться за самый большой проект в нашей истории- 2Д платформер. Нет, мы не делали до этого какие-нибудь FlappyBird’ы или змейки, но объём работы в этом проекте просто сносил нам мозг. Для начала мы отказались от обычных, вертикальных лестниц, а взяли ступенчатые лестницы. Мы написали логику для дверей, которые можно было закрывать «на ключ» и прикрутили разрушаемые блоки. Наступил момент, когда надо было писать Искусственный Интеллект. Как самому опытному из нашей малоопытной команды скриптеру, честь писать ИИ выпала мне.
я плакал в подушку, не понимая, что мне делать
я был очень горд тем, что именно я напишу одну из самых сложных механик в нашем проекте.
Этап 1: поиск пути и движение по пути
Этап 1.1: Поиск пути
Так как основные локации у нас будут не на открытом воздухе, а в зданиях, то нужно было сделать поиск маршрута среди десятков дверей, лестниц и комнат. Подумав, мы с тимлидом решили, что стоит сделать некую пародию на алгоритм A*, где у нас будут узлы, между которыми будет бегать бот. сделали тестовую сцену, поставили узлы, для наглядности повесили на них SprateRenderer’ы. А что делать дальше?
С этим вопросом в голове я ходил 3 дня. Пока один мой товарищ не предложил интересный алгоритм, когда узлы будут возбуждаться, подобно нейронам головного мозга.
Итак. Есть узел A, около которого стоит ИИ и узел Б, к которому ИИ должен прийти. выдали всем Узлам свой ID и пометили соединенные узлы, к которым они будут отправлять сигнал. У каждого узла была своя булевая переменная «isChecked» и переменная «triggeredBy», в котором хранился ID узла, который его «возбудил». Так, когда затронут узел Б, он пройдёт по цепочке к узлу А, узнавая все ID узлов, которые прошёл сигнал. Так я получал путь из ID узлов, которые должен пройти бот. Если вы вдруг не поняли, как это работает, то я расскажу вам сказку.
Однажды Ивану нечего было делать, и поэтому он решил составить своё фамильное древо. К несчастью у него не хватало информации для воплощения этой идеи в жизнь. Иван был так увлечён этой идеей, что решил, что добравшись до главного прародителя он сможет обнаружить своих неожиданных родственников. Иван знал, где он может встретиться со своим отцом, чтобы поговорить и направился туда. Отец рассказал ему, что деда Ивана звали Iван и рассказал, где его можно найти. Иван нашёл Iвана, и тот рассказал, что прадед Ивана мог знать этого прародителя лично, но он давно помер. Иван посветил половину жизни изучению тёмных искусств, но в итоге смог воскресить своего прадеда. Прадед сказал, что его прародитель является оборотнем и что зарыто его тело на опушке у трёх сосен. Иван пошёл туда и обнаружил, роющего могилу человек. Оказалось, что этот человек – двеннадцатиюродный брат Иван. Иван сильно удивился тому, что они пришли к одному месту, но брат оказался программистом и всё объяснил.
– Здесь работает принцип навигации из моей любимой игры *название*!
– И в чём же он заключается?
– От каждого наследника можно придти к общему родителю системы, если в этой системе каждый наследник знает лично своего родителя.
Получился вот такой результат:
Это массив int-переменных, которые означают ID узлов, которые должен пройти юнит.
Этап 1.2.1: движение по пути
У меня есть список ID узлов, у меня есть бот. Что дальше? А дальше то, что надо двигать бота по этому пути.
Ну я прикинул такой вариант: дошёл бот до узла, поставил галочку, посмотрел, что там дальше, пошёл к следующему узлу. Сделал. Заработало. Я был рад… Но…
Этап 1.2.2: лестницы и их взаимодействие с ИИ
Как говорил один чёрно-белый герой: «Лестницы… мой главный враг..»
Нужно было определить, следующий узел находится над ИИ, под или на уровне. В зависимости от этой информации он будет проходить мимо лестницы(игнорировать коллизию), или забираться на неё(взаимодействовать с коллизией). Ох и много нервных клеток полегло на этой битве с движком… На форумах вычитал, что можно расставить всё по слоям и во вкладке Edit->Physics2D можно настроить игнорирование коллизий одного слоя и другого. Всё заработало!
Осталось только научить его открывать двери. Тут проблем не возникло.
Итог:
Этап 2: Эмоции и реплики
Этап 2.1: Эмоции
Да, мы решили приделать эмоции… И реплики.
Эмоции будут выделяться выражением лица и анимациями действий.
Реплики будут отображаться текстом над головой.
Эмоции я прикрутил на одном дыхании… Для этого я уже сделал переменную «emotionID», которая хранила в себе ID эмоции. А вот реплики…
Этап 2.2: Реплики
Для красоты сделал отдельный класс Phrases
[System.Serializable] //сериализуемый для красивого отображения в инспекторе
class Phrases
{
public string Name; //название эмоции, которой соответствуют реплики
public int byEmotionID; //для определения, с какой эмоцией это соединять
public string[] Phrases;//массив самих реплик
}
Сделал массив этого класса. Дальше просто в зависимости от emotionID ставил любую фразу из списка. Обновлял раз в N секунд.
Но я решил пойти дальше! Для каждого персонажа сделал файл с .phrs расширением, закодировал это с помощью того, что к байтовому числу каждого символа в файле прибавлял X байтов. Получался нечитаемый, не изменяемый текст. сделал что-то типа своей разметки, сделал алгоритм, который берёт и по этой разметке всё переводит в массив класса Phrases.
Отлично! Всё работает!
Хотел на чистом шарпе написать программку для заполнения такого файла, но тут мы переходим к концу истории.
Конец..?
От большой, неоплачиваемой работы мы быстро устали… Присоединение нового кодера не помогло… Команда развалилась… Код всё-ещё лежит на облаке Unity.
Конечно, не так давно начала зарождаться идея продолжить проект, но уже с дальнейшей монетизацией… Если что-то получится, то я, пожалуй, напишу всю историю разработки. Но на этом мой рассказ про начинающего скриптера и ИИ заканчивается.
Компании в 21 веке придерживаются подхода, ориентированного на контент, и все дело в качестве и скорости контента. По оценкам, в день публикуется около семи миллионов сообщений в блогах. В условиях такого колоссального объема важно, чтобы компании оставались на переднем крае, когда дело доходит до использования программного обеспечения для написания Искусственного Интеллекта.
Эти инструменты позволяют использовать машинное обучение, чтобы начать печатать, а затем полагаться на ИИ для завершения предложений, проверки грамматики и создания предложений без ошибок.
В этой статье мы оценили и рассмотрел лучшее программное обеспечение для создания искусственного интеллекта, чтобы перенести вашу контент-стратегию в 2020-е годы.
Какое программное обеспечение для создания искусственного интеллекта лучше?
Вот несколько вариантов программного обеспечения для написания ИИ в этом году.
1. Jarvis .
Jarvis-это инструмент для написания ИИ, который поможет вам превратить ваш текст в полностью персонализированное и уникальное произведение искусства. Вы можете написать сообщение в блоге, статью или даже стихотворение вместе с Джарвисом, которое автоматически создаст контент, соответствующий общему стилю вашего письма.
С помощью команды Jarvis вы просто начинаете печатать, и Джарвис закончит ваши предложения за вас. Процесс полностью автоматизирован и работает невероятно хорошо при соблюдении правильной пунктуации, заглавных букв и грамматики.
Затем Джарвис создает произведение искусства в ответ на ваше письмо. Алгоритм преобразует каждое слово в изображение, используя ряд библиотек и алгоритмов, которые используются на протяжении всей программы. Это означает, что Джарвис не просто создает случайные изображения–он создает изображения из реальных слов!
Характеристики
Джарвис использует продвинутый искусственный интеллект для обнаружения ключевых элементов в вашем письме и сопоставляет их с идеальными примерами из более чем миллиона предложений в базе данных Джарвиса. Результаты довольно удивительные, и Джарвис действительно может оживить ваше творчество.
Джарвис оптимизирован для работы с любым типом письма, включая творческое письмо, деловые документы, статьи и даже стихи! Некоторые примеры включают:
- Поиск: Определите ключевые элементы в вашем тексте, такие как имена или места людей, местоимения (например, он/она, я/я), глаголы, прилагательные и существительные.
- Поиск/замена: Вы можете искать определенные слова в тексте по ключевому слову (например, кошка, собака, красный) или синониму (например, животное -> домашнее животное). Эта функция отлично подходит для создания списка часто используемых фраз, таких как “быстрая коричневая лиса”.
- Пунктуация: Добавьте общие знаки препинания, такие как запятые, точки и восклицательные знаки. Эта функция идеально подходит для тех, кто склонен забывать мелкие детали, такие как количество мест, которые нужно использовать после определенного периода.
- Шрифты/стили: С более чем 11 000 бесплатных шрифтов и 2500 категорий для различных стилей письма, вы можете найти идеальный шрифт, соответствующий вашему настроению. Вы также можете изменить цвет текста.
- Цитата/перефразировка: Этот инструмент автоматически идентифицирует цитаты или перефразированные разделы текста из их контекста в вашем контенте. Я использовал эту функцию, чтобы выделить.
Цены
Jarvis поставляется с тремя тарифными планами: Стартовый, Профессиональный и Премиум. Все планы доступны для бесплатной пробной версии.
Джарвис-это удивительный инструмент для написания ИИ, который позволяет вам создавать уникальные произведения искусства в ответ на ваши собственные слова! Я использовал эту услугу для всего этого раздела обзора (теперь я чувствую себя вполне удовлетворенным!).
2. Grammarly.
Grammarly начала свою деятельность в 2009 году и позиционирует себя как ведущий инструмент для проверки грамматики и орфографии на рынке. С помощью него вы можете проверять орфографию и грамматику, а также выявлять контекстуальные ошибки, улучшая свои навыки письма.
Grammarly позволяет выполнять проверки на нескольких языках, таких как австралийский, американский и британский английский. Инструмент также содержит положения для проверки на плагиат и содержит предложения о том, как вы можете улучшить качество написанного вами текста.
Один из аспектов Grammarly, который выглядит заманчивым, заключается в том, что он поставляется с простым в использовании плагином для браузера. Как только вы включили это в свой браузер, вы можете выполнять проверки Grammarly при составлении электронных писем и записи в документах Google.
Такая детальная проверка делает процесс записи плавным. С расширением Grammarly вы никогда не будете застигнуты врасплох ошибочными орфографическими, пунктуационными и другими ошибками при написании. Кроме того, интерфейс и подсказки об ошибках очень удобны для пользователя, так что это еще одно преимущество.
Характеристики:
Grammarly использует передовые методы искусственного интеллекта и обработки естественного языка (NLP) для анализа вашего текста. Инструмент помощник по написанию выделяет проблемы со структурой предложений и стилем и даже может помочь вам сделать ваш текст более кратким, ясным и понятным.
Ниже перечислены некоторые функции, которые предлагает Grammarly:
- Проверка орфографии, грамматики и контекстуальных ошибок
- Поддержка нескольких языков
- Проверка на плагиат
- Оценка качества контента
- Простая интеграция с большинством бизнес-приложений
- Надстройка для безопасного браузера
- Полностью основанная на ИИ проверка
- Доступно как на настольных, так и на мобильных устройствах
Цены:
Grammarly разделила свои планы на три уровня: Бесплатный, Премиум и Бизнес. Бесплатные и премиальные планы лучше всего подходят для отдельных маркетологов и профессионалов. Для больших команд лучше, если вы выберете бизнес-план.
3. Wordtune.
Лучше всего подходит для рерайта контента
Wordtune не позиционирует себя как инструмент для проверки грамматики. Вместо этого это один из немногих программных инструментов ИИ, которые пытаются понять контекст и семантику того, что вы пишете. Это детище лабораторий AI21, которое использует несколько языковых моделей для перефразирования предложений.
Используя Wordtune, вы можете работать над тем, чтобы сделать свой контент более привлекательным, привлекательным и удобным для использования. Чтобы помочь вам достичь этого, сервис использует передовые технологии NLP на основе нейронных сетей в сочетании со стандартными инструментами искусственного интеллекта.
Инструмент перефразирует написанный вами контент и переписывает его более плавно и понятно. Он пытается улучшить читабельность текста вместо регулярной проверки грамматики, которая больше фокусируется на синтаксисе, чем на семантике.
Характеристики:
Wordtune помогает вам писать предложения, которые отлично читаются и в то же время сохраняют первоначальный смысл. Он предоставляет вам несколько различных вариантов для каждого предложения, которое вам нужно переписать.
Помимо вышеперечисленного, ниже приведены некоторые другие функции, которые предлагает Wordtune:
- Полностью облачный инструмент
- Функция умной вставки
- Работает со всеми редакторами и почтовыми клиентами
- Перезаписи на основе семантического анализа
- Полный контроль над длиной и стилем предложения
- Предложения в режиме реального времени на основе тезауруса
- Многоязычный поиск слов
- Простая интеграция с сайтами социальных сетей и бизнес-инструментами
Цены:
Как и Grammarly, Wordtune также имеет трехуровневую структуру ценообразования. Бесплатный тарифный план доступен для всех желающих без оплаты или регистрации. Для расширенной функциональности вы можете переключиться на платные планы Премиум-класса, как описано ниже.
1. Бесплатный план за 0 долларов
- Основные предложения
- Основные переписывания
- Надстройка Chrome
2. Премиум-план по цене $9,99 в месяц
- Расширенные переписывания и предложения
- Регуляторы формальности и длины
- Поиск слов
3. Премиальный план для команд
- Все в премиум-классе
- Командный биллинг
- Индивидуальные цены
4. ProWritingAid
Лучше всего подходит для редактирования учебного контента
Если вы имеете дело с учебным контентом, который не допускает грамматических ошибок, то ProWritingAid может значительно облегчить вам задачу. Он предлагает расширенную грамматику и проверку орфографии, а также предложения по стилю. Вы можете выбрать из более чем 1000 стилей письма, которые предварительно встроены в него.
Программное обеспечение помогает авторам улучшать свой контент, предоставляя подробные отчеты, которые могут помочь улучшить их стиль письма. Он также предоставляет вам уникальные предложения по написанию, соответствующие статьи и даже видео и викторины, чтобы сделать процесс редактирования более увлекательным.
ProWritingAid помогает вам искать и отсеивать нежелательные элементы в тексте, такие как избыточный текст, нечеткость и чрезмерно длинные предложения. И, как и большинство алгоритмов редактирования на основе искусственного интеллекта, он учится и помогает вам учиться по мере того, как вы продвигаетесь вперед и используете его больше. Используйте его для исследовательских проектов, профессиональных статей и многого другого.
Характеристики:
Одной из особенностей ProWritingAid, о которой можно упомянуть, является его повсеместное распространение. Приложение предлагает расширение Chrome, надстройку MS Office и даже работает с документами Google и Scrivener. Независимо от того, какой редактор вы используете, ProWritingAid может вам помочь.
Вот список основных функций, которые предлагает этот инструмент:
- Проверка грамматики и плагиата
- Тональный анализ текста
- Подробные показатели вовлеченности
- Форматирование стиля и предложений
- Простая интеграция API
- Полностью облачное решение
- 20 подробных письменных отчетов
- Интеграция с популярными приложениями, такими как Medium и Gmail
Цены:
Расширение Chrome ProWritingAid доступно бесплатно, и вы можете выбрать любой из платных планов в соответствии с вашими потребностями. Планы сегментированы с учетом потребностей пользователей.
Вот краткое описание тарифных планов ProWritingAid:
- Ежемесячный план составляет 20 долларов США в месяц
- Годовой план на уровне 79 долларов США в год
- Пожизненный план в размере 399 долларов США (единовременный платеж)
- Индивидуальный бизнес-план за 6 долларов в месяц
- Бизнес — команды планируют 8 долларов США на пользователя в месяц (минимум два пользователя, счет выставляется ежегодно).
- Корпоративный план по индивидуальным тарифам
Сервис также предоставляет скидки для студентов и оптовые покупки.
5.Sapling.
Лучше всего подходит для сообщений о продажах и поддержке
Sapling-это программное обеспечение-помощник по написанию ИИ, которое работает с платформами обмена сообщениями и CRM. Это помогает отделам продаж и поддержки составлять и отправлять персонализированные ответы клиентам.
Используя этот инструмент, менеджеры также могут получить представление об управлении разговорами и обучении команд для улучшения взаимодействия с клиентами. В настоящее время этот инструмент используется крупными брендами, такими как TaskUs и Lionbridge.
Саженец утверждает, что фиксирует языковые проблемы и ошибки гораздо лучше, чем традиционные средства проверки орфографии, поскольку он использует алгоритм машинного обучения. Он также имеет впечатляющую функцию автозаполнения, которая может помочь ускорить процесс составления ответов.
Характеристики:
С Sapling вам больше не придется зависеть от чат-ботов, которые используют шаткую логику. Инструмент работает для расширения возможностей человеческих агентов, сохраняя и извлекая наиболее распространенные ответы на запросы. Одним щелчком мыши вы можете ответить клиенту и решить его проблемы.
Помимо вышеперечисленного, Sapling также предоставляет доступ к следующим функциям:
- Автозаполнение везде для более быстрого составления
- Библиотека фрагментов, доступная с помощью веб-инструментов
- Хранилище сообщений для вставки предварительно отформатированного текста
- Способность предоставлять ответы «человек в цикле»
- Отчетность, ориентированная на производительность
- Многоканальная поддержка широкого спектра приложений
- Безопасность корпоративного уровня
- Быстрая установка
Цены:
Бесплатный план Sapling содержит основные предложения и может быть использован на бесплатных доменах. Он также предлагает шифрование AES-256 и TLS. Чтобы воспользоваться преимуществами расширенных функций и предложений, вам нужно будет выбрать любой из платных планов.
Вот краткое сравнение структуры ценообразования на Sapling :
- Бесплатный план за 0 долларов в месяц
- Профессиональный план за 25 долларов в месяц
- Корпоративный план по индивидуальным тарифам
6. AI Writer.
Лучше всего подходит для автоматического создания контента
AI Writer подходит для SEO-писателей и контент-ниндзя, у которых нет времени на детальное исследование для написания статей и создания контента для маркетинга. Этот инструмент, по сути, является генератором контента ИИ, который создает для вас статью ИИ на основе информации, которую вы ему предоставляете.
Чтобы использовать программное обеспечение для написания статей, вам необходимо ввести заголовок темы или ключевое слово, и система автоматизации программного обеспечения удалит соответствующую информацию из Интернета и создаст для вас статью. На веб-сайте компании утверждается, что его использование может сэкономить до 33% времени на написание.
Характеристики:
Помимо того, что это программное обеспечение для автоматического написания статей, AI Writer также предоставляет функцию рерайта текста. Здесь вы можете ввести написанную вами статью, и программное обеспечение перефразирует ее. Вы даже можете перефразировать статьи, написанные самим автором ИИ.
Ниже приведены некоторые важные функции, которые предлагает AI Writer:
- Автоматическое написание контента
- Переписывание/изменение формулировки статьи
- API для автоматического ведения блога
- Более быстрое создание контента
- 94,47% Скорость прохождения копировального листа
Цены:
Официальный сайт AI Writer предлагает бесплатную пробную версию с ограниченными возможностями и позволяет создавать автоматические статьи в течение семи дней. Если вы удовлетворены пробной производительностью, вы можете выбрать любой из платных планов.
Вот список платных планов, которые предлагает AI Writer:
- Базовый план на 19 долларов в месяц
- Стандартный план на 49 долларов в месяц
- Индивидуальный план по индивидуальным тарифам
7. Articoolo.
Лучше всего подходит для автоматических статей WordPress
Для блоггеров, работающих на WordPress, Articoolo может быть лучшим решением для быстрого создания контента блога. Это еще одно программное обеспечение для написания статей и генератор контента искусственного интеллекта, который предлагает плагин WordPress, чтобы сделать процесс создания статей плавным и легким.
Используя этот инструмент, вам не придется тратить время на многочасовые исследования и ручной сбор информации. Просто используйте Articoolo, чтобы ускорить процесс и ускорить отслеживание ваших сообщений в блоге.
Характеристики:
Основная услуга, которую предлагает Articoolo, — это создание статей с искусственным интеллектом, но вы также можете использовать ее для переписывания существующих статей. Он даже поставляется с API и плагином WordPress для плавной интеграции с другими приложениями.
Ниже перечислены основные функции Articoolo:
- Быстрое создание и переписывание статей
- Генератор идей и названий тем
- Краткое изложение статьи
- Цитаты и поиск изображений
- Помощник писателя
Цены:
Тарифные планы Articoolo бывают двух типов: планы с оплатой за пользование и Ежемесячные подписки. Они также предлагают групповые и пользовательские подписки для более крупных компаний, которым требуется массовое обслуживание.
Вот список планов ценообразования:
- 19 долларов за 10 статей
- 75 долларов за 50 статей
- 99 долларов за 100 статей
- 29 долларов в месяц за 30 статей
- 49 долларов в месяц за 100 статей
- 99 долларов в месяц за 250 статей
Что такое Искусственный интеллект или Программное обеспечение для написания ИИ?
Программное обеспечение для написания ИИ относится к программным средствам, которые используют методы искусственного интеллекта и машинного обучения для ускорения и поддержки процесса создания письменного контента человеческого качества. Эти инструменты играют важную роль в индустрии контент-маркетинга.
Используя программное обеспечение для написания ИИ, вы можете быстрее создавать статьи в блогах, лучше писать электронные письма и отшлифовывать текст, чтобы привлечь внимание читателей. Инструменты для письма на основе искусственного интеллекта могут помочь вам во всем, от грамматики и синонимов до контекста, стиля и структуры предложений.
В завершении
Одна опечатка может оказать огромное влияние на имидж вашего бренда. В результате любой контент, который вы создаете, должен быть отшлифован, точен и безошибочен. Программное обеспечение для создания ИИ помогает компаниям и стартапам делать именно это и ускорять маркетинговый процесс.
Если вы ищете подходящее программное обеспечение для создания искусственного интеллекта, выберите его из списка ниже:
- Джарвис: Лучшее программное обеспечение для создания искусственного интеллекта
- Grammarly: Лучше всего подходит для безошибочной вычитки
- Wordtune Лучше всего подходит для перефразирования контента
- ProWritingAid Лучше всего подходит для редактирования академического контента
- Саженец Лучше всего подходит для сообщений о продажах и поддержке
- AI-писатель Лучше всего подходит для автоматического создания контента
- Articoolo Лучше всего подходит для автоматических статей WordPress
Независимо от того, хотите ли вы создавать отличный контент или просто выпускать короткие статьи, вышеперечисленные инструменты могут помочь вам в этом. Вы также можете использовать комбинацию нескольких инструментов для повышения качества контента.
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