Cognitive science is usually defined as the scientific study either of mind or of intelligence (e.g. Luger 1994). Practically every formal introduction to cognitive science stresses that it is a highly interdisciplinary research area, in which psychology, neuroscience, linguistics, philosophy, computer science, anthropology, biology, and physics are its principal specialized or applied branches.
In the early twentieth century, the popular notion of mind was altered by John B. Watson's behaviorist viewpoint that consciousness was not an appropriate question for scientific inquiry and that only observable behavior should be studied. In the 1950s, the prevailing viewpoint began to change again as scientists started conceptualizing theories of mind based on complex representations and computational procedures. George Miller pioneered the concept of mental representations, chunks of information that are encoded and decoded within the mind. John McCarthy, Marvin Minsky, Allen Newell, and Herbert Simon founded the field of artificial intelligence around the same time. Noam Chomsky further removed the study of the mind from the behaviorism of Watson, B.F. Skinner, and others that had been psychology's primary focus.
The term cognitive science was coined by Christopher Longuet-Higgins in his 1973 commentary on the Lighthill report, which concerned the then-current state of Artificial Intelligence research. In the same decade, the journal Cognitive Science and the Cognitive Science Society began.
An analogy often used to describe LOA is to compare the brain to a computer. The physical level would consist of the computer's hardware, the behavioral level represents the computer's software, and the functional level would be the computer's operating system, which allows the software and hardware components to communicate.
A central tenet of cognitive science is that a complete understanding of the mind/brain cannot be attained by studying only a single level. For example, consider the problem of remembering a phone number and recalling it later. How does this process occur? One approach would be to study behavior through direct observation. You could present a person with a phone number, ask them to recall it after some delay, and measure their accuracy. Another approach would be to study the firings of individual neurons while a person is trying to remember the phone number. Neither of these experiments on their own would fully explain how the process of remembering a phone number works. Even if we had the technology available to map out every neuron in the brain in real-time, and we knew when each neuron was firing, we still would not know how a particular firing of neurons translates into the observed behavior. Thus, we need an understanding of how these two levels relate to each other. This can be provided by a functional level account of the process. By studying a particular phenomenon from multiple levels, we are better able to understand the processes that occur in the brain to give rise to a particular behavior. For criticisms of this framework see Functionalism (psychology).
Many but not all who consider themselves cognitive scientists have a functionalist view of mind/intelligence, which means that, at least in theory, they study mind and intelligence from the perspective that these attributes could perhaps (at least someday) be properly attributed not only to human beings but also to, say, other animal species, alien life forms or particularly advanced computer systems. This perspective is one of the reasons the term "cognitive science" is not exactly coextensive with neuroscience, psychology, or some combination of the two.
The earliest entries for the word "cognitive" in the OED take it to mean roughly pertaining "to the action or process of knowing". The first entry, from 1586, shows the word was at one time used in the context of discussions of Platonic theories of knowledge. Most in cognitive science, however, presumably do not believe their field is the study of anything as certain as the knowledge sought by Plato.
Below are some of the main topics that cognitive science is concerned with. This is not an exhaustive list, but is meant to cover the wide range of intelligent behaviors. See List of cognitive science topics for a list of various aspects of the field.
''"... One major contribution of AI and cognitive science to psychology has been the information processing model of human thinking in which the metaphor of brain-as-computer is taken quite literally. ."'' AAAI Web pages.
Artificial intelligence (AI) involves the study of cognitive phenomena in machines. One of the practical goals of AI is to implement aspects of human intelligence in computers. Computers are also widely used as a tool with which to study cognitive phenomena. Computational modeling uses simulations to study how human intelligence may be structured. (See the section on computational modeling in the Research Methods section.)
There is some debate in the field as to whether the mind is "best" viewed as a huge array of small but individually feeble elements (i.e. neurons), or as a collection of higher-level structures, such as "symbols", "schemas", "plans", and rules. The former view uses connectionism to study the mind, whereas the latter emphasizes symbolic computations. One way to view the issue is whether it is possible to accurately simulate a human brain on a computer without accurately simulating the neurons that make up the human brain.
Attention is the selection of important information. The human mind is bombarded with millions of stimuli and it must have a way of deciding which of this information to process. Attention is sometimes seen as a spotlight, meaning one can only shine the light on a particular set of information. Experiments that support this metaphor include the dichotic listening task (Cherry, 1957) and studies of inattentional blindness (Mack and Rock, 1998). In the dichotic listening task, subjects are bombarded with two different messages, one in each ear, and told only to focus on one of the messages. At the end of the experiment, when asked about the content of the unattended message, subjects could not report it. (Still needs editing)
The ability to learn and understand language is an extremely complex process. Language is acquired within the first few years of life, and all humans under normal circumstances are able to acquire language proficiently. Some of the driving research questions in studying how the brain processes language include: (1) To what extent is linguistic knowledge innate or learned?, (2) Why is it more difficult for adults to acquire a second-language than it is for infants to acquire their first-language?, (3) How are humans able to understand novel sentences they have never heard before?
The study of language processing ranges from the investigation of the sound patterns of speech to the meaning of words and whole sentences. Linguistics often divides the types of language processing into orthography, phonology and phonetics, syntactics, semantics, and pragmatics. Many aspects of language can be studied from each of these components and from their interaction.
The study of language processing in cognitive science is closely tied to the field of linguistics. Linguistics was traditionally studied as a part of the humanities, including studies of history, art and literature. In the last fifty years or so, more and more researchers have studied knowledge and use of language as a cognitive phenomenon, the main problems being how knowledge of language can be acquired and used, and what, precisely it consists of. Linguists have found that, while humans form sentences in ways apparently governed by very complex systems, they are remarkably unaware of the rules that govern their own speech. Thus, linguists must resort to indirect methods to determine what those rules might be. If speech is indeed governed by rules, they appear to be opaque to any conscious consideration.
A very fecund way to approach cognitive issues in language is the pragmatics of language, that is, the current use of the language by a real speaker. From a pragmatic analytical perspective it is possible to show that some people who have a profession in which they categorically work with language (e.g. journalists) have a behavior which is not predictable by known theories. The pragmatic approach is also useful in the study of collective distributed decision making, particularly in broadcasted systems (for instance aviation approach control - APP).
Learning and development are the processes by which we acquire information over time. Infants are born with little or no knowledge (depending on how knowledge is defined), yet they rapidly acquire the ability to use language, walk, and recognize people and objects. Research in learning and development aim to explain the mechanisms by which these processes might take place.
A major question in the study of cognitive development is the extent to which certain abilities are innate or learned. This is often framed in terms of the nature versus nurture debate. The nativist view emphasizes that certain features are innate to an organism and are determined by its genetic endowment. The empiricist view, on the other hand, emphasizes that certain abilities are learned from the environment. It is clear that intelligent behavior has components that are both innate and learned, but the extent to which particular behaviors are innate is a major research question. In the area of language acquisition, for example, many questions remain about whether or not a special language acquisition device is necessary to facilitate the learning of language, or if humans can learn language through more general learning processes that take advantage of the information available in the environment.
Memory allows us to store information for later retrieval. Memory is often thought of consisting of both a long-term and short-term store. Long-term memory allows us to store information over prolonged periods (days, weeks, years). We do not yet know the practical limit of long-term memory capacity. Short-term memory allows us to store information over short time scales (seconds or minutes).
Memory is also often grouped into declarative and procedural forms. Declarative memory refers to our memory for facts and specific knowledge (e.g., Who was the first president of the U.S.?). Procedural memory allows us to remember actions and motor sequences (e.g. how to ride a bicycle).
Main article: Perception
Perception is the ability to take in information via the senses, and process it in some way. Vision and hearing are two dominant senses that allow us to perceive the environment. Some questions in the study of visual perception, for example, include: (1) How are we able to recognize objects?, (2) Why do we perceive a continuous visual environment, even though we only see small bits of it at any one time? One tool for studying visual perception is by looking at how people process visual illusions. The image on the right of a Necker cube is an example of a bistable percept, that is, the cube can be interpreted as being oriented in two different directions.
The study of haptic (tactile), olfactory, and gustatory stimuli also fall into the domain of perception.
Action is taken to refer to the output of a system. In humans, this is accomplished through motor responses. Spatial planning and movement, speech production, and complex motor movements are all aspects of action.
Brain imaging involves analyzing activity within the brain while performing various cognitive tasks. This allows us to link behavior and brain function to help understand how information is processed. Different types of imaging techniques vary in their temporal (time-based) and spatial (location-based) resolution. Brain imaging is often used in cognitive neuroscience.
Computational models require a mathematically and logically formal representation of a problem, therefore they are weak aspect of cognitive sciences. Computer models are used to the simulation and experimental verification of different specific and general properties of intelligence. Computational modelling can help us understand the functional organization of a particular cognitive phenomenon.
All the above approches tend to be generalized to the form of integrated computational models of a syntetic/abstract intelligence, in order to be applied do the explanation and improvement of individual and social/organizational decision-making. A new domain of the research in this direction is called socio-cognitive engineering, see Google.
See the Cognitive scientists or the list of cognitive scientists
Some of the more recognized names in cognitive science are usually either the most controversial or the most cited. Within philosophy familiar names include Daniel Dennett who writes from a computational systems perspective, John Searle known for his controversial Chinese Room, Jerry Fodor who advocates functionalism, and Douglas Hofstadter who is famous for writing Gödel, Escher, Bach which questions the nature of words and thought. In the realm of linguistics Noam Chomsky and George Lakoff have been influential. Popular names in the discipline of psychology include James McClelland and Steven Pinker.
Cognitive science | Interdisciplinary fields | Psychology
علوم استعرافية | Kognitionswissenschaft | Ciencia cognitiva | Sciences cognitives | Saidheans “Cognitive” | Vitsmunavísindi | Scienze cognitive | מדעים קוגניטיביים | Cognisieweitesjap | Sains kognitif | Cognitiewetenschap | 認知科学 | Kognitywistyka | Ciência cognitiva | Cognitive science | Kognitívna veda | Когнитивна наука | Kognitivna nauka | Kognitiotiede | Kognitionsvetenskap | Bilişsel Bilim | 认知科学
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