
Cognition refers to the broad set of mental processes that relate to acquiring knowledge and understanding through thought, experience, and the senses. [2] It encompasses all aspects of intellectual functions and processes such as: perception, attention, thought, imagination, intelligence, the formation of knowledge, memory and working memory, judgment and evaluation, reasoning and computation, problem-solving and decision-making, comprehension and production of language. Cognitive processes use existing knowledge to discover new knowledge.
Cognitive processes are analyzed from very different perspectives within different contexts, notably in the fields of linguistics, musicology, anesthesia, neuroscience, psychiatry, psychology, education, philosophy, anthropology, biology, systemics, logic, and computer science.[3] These and other approaches to the analysis of cognition (such as embodied cognition) are synthesized in the developing field of cognitive science, a progressively autonomous academic discipline.
Definition
[edit]Cognitions are mental processes that deal with knowledge, involving the acquisition, transformation, storage, retrieval, and use of information.[4] For example, these processes occur when reading an article, as sensory information about the text is acquired and preexisting linguistic knowledge is retrieved to interpret the meaning. This information is then transformed as different ideas are linked, resulting in the storage of information as memories and beliefs are formed.[5]
Cognitions are a pervasive part of mental life, and many cognitive processes happen simultaneously. They are essential for understanding and interacting with the world by making individuals aware of their environment and helping them plan and execute appropriate responses.[6] Thought is a paradigmatic form of cognition. It considers ideas, analyzes information, draws inferences, solves problems, and forms beliefs. However, cognition is not limited to abstract reasoning and encompasses diverse psychological processes, including perception, attention, memory, language, and decision-making.[7] It is debated whether or under what conditions feelings, emotions, and other affects qualify as cognitions.[8] Some controversial views associated with cognitivism argue that all mental phenomena are cognitions.[9]
Cognitive activities can happen consciously, like when a person deliberately analyzes a problem step by step. They can also take place unconsciously, such as automatic mechanisms responsible for language processing and facial recognition.[10] Rationalists typically emphasize the role of basic principles and inferences in the generation of knowledge. Empiricists, by contrast, highlight sensory processes as the ultimate source of all knowledge of the world, arguing that all cognitive processes deal with sensory input.[11] Many fields of inquiry study cognition, including psychology, cognitive science, neurology, and philosophy. While research focuses primarily on the human mind, cognition is not limited to humans and encompasses animal and artificial cognition.[12]
The term cognition originates from the Indo-European root gnō-, meaning 'to know'. This root is present in the Latin term gnōscere, also meaning 'to know', which led to the formation of the verb cognōscere, meaning 'to learn, to investigate'. Through its past participle cognitus, the Latin verb entered Middle English as cognicioun. The earliest documented use occurred in 1447, eventually evolving into the modern English word cognition.[13]
Types of cognitive processes
[edit]Cognitive processes encompass various types, each managing different information and performing distinct functions within the human mind. They are sometimes divided into basic processes, like perception and memory, and higher-order processes, like thinking. This distinction is based on the idea that higher-order processes rely on basic processes and could not occur without them.[14]
Perception and attention
[edit]Perception is the organization and interpretation of sensory information about the world. It is a complex mental activity that involves the interplay of diverse cognitive processes, many of which occur automatically and unconsciously. It starts with physical stimuli, such as light or sound, which are detected by receptors and transmitted to the brain as electrical signals. These signals are processed in various brain regions to construct a coherent experience of distinct objects and events while situating them in a spatial-temporal framework.[15]
Certain cognitive processes are responsible for detecting basic features in the sensory data, such as edges, colors, and pitches, while others process spatial location. Object recognition is another function that compares this information with stored representations in search of known patterns, such as recognizing a familiar landmark or identifying a specific melody. Some cognitive faculties are specialized for tasks only relevant to particular perceptual contents, such as face recognition and language processing.[16]
Cognitive processes responsible for perception rely on various heuristics to simplify problems and reduce cognitive labor. For example, visual perception often assumes that the size, shape, and color of objects remain constant to ensure a consistent view despite changes in perspective or lighting. Heuristics sometimes lead to inaccurate or illusory perceptions.[17]
Different forms of perception are associated with distinct types of stimuli and receptors. Visual perception, based on the detection of light, is a primary source of knowledge about the external environment. Other forms of perception include hearing, touch, smell, and taste. Data from these different modalities is integrated by higher-order cognitive processes to form a unified and coherent experience of the world.[18] Although sensory data is a central factor of perceptual experience, it is not the only factor, and various other forms of information influence the underlying cognitive operations. For instance, memories from earlier experiences determine which objects are experienced as familiar. Other factors include the expectations, goals, background knowledge, and belief system of the individual.[19]
Attention is a central aspect of mental processes that focuses cognitive resources on certain stimuli or features. It involves the selection or prioritization of specific aspects while filtering out irrelevant information. For example, attention is responsible for the cocktail party effect, in which the brain concentrates on a single conversation while relegating the surrounding party noise to the background. The selection process is crucial since the total amount of information is typically too vast for the brain to process all at once. It ensures that the most important features are prioritized. Attention is not limited to perception but is also present in other cognitive processes, such as remembering and thinking.[20]
Memory and learning
[edit]Memory is the ability to retain, store, and retrieve information. It includes the capacity to consciously recall past experiences and is central to many other cognitive activities that rely on stored data to process information and coordinate behavior. Memory processes have three stages: an input phase where new information is acquired, a storage phase preserving the information for future access, and an output phase retrieving the information and making it available to other cognitive operations. Different types of memory are distinguished by the function they perform and the type of information they operate on.[21]
Working memory stores information temporarily, making it available to other cognitive processes while allowing manipulation of the stored information. During mental arithmetic, for example, the working memory holds and updates intermediate results while calculations are performed.[22] The term is sometimes used interchangeably with the term short-term memory, which is defined by brief retention without the emphasis on dynamic manipulation. Long-term memory, by contrast, retains information for long periods, in some cases indefinitely. During storage, the information is not actively considered. However, it remains available for retrieval, like when recalling a childhood memory.[23] Passive exposure to information is usually not sufficient for the effective formation and retrieval of long-term memories. Relevant factors include the level and type of engagement with the content, like attention, emotion, mood, and the context in which the information is processed.[24]
Long-term memory is typically divided into episodic, semantic, and procedural memory based on the type of information involved.[25] Episodic memory deals with information about past personal experiences and events. New memories are stored as a person undergoes experiences and can be accessed later, either by accessing factual information about the events or by reliving them. For example, remembering one's last holiday trip involves episodic memory.[26] Semantic memory deals with general knowledge about facts and concepts not linked to specific experiences. For instance, the information that water freezes at 0 °C is stored in semantic memory.[27] Procedural memory handles practical knowledge of how to do things. It encompasses learned skills that can be executed, like the abilities to ride a bicycle and type on a keyboard.[28]
As a form of know-how, procedural memory is distinct from the capacity to verbally describe the exact procedure involved in the execution, like explaining how to maintain balance on a bicycle.[29] For this reason, procedural memory is categorized as non-declarative or implicit memory, which operates automatically and cannot be consciously accessed.[30] Episodic and semantic memory, by contrast, belong to declarative or explicit memory, which encompasses information that can be consciously recalled and described.[31]
The different forms of memory play a central role in learning, which involves the acquisition of novel information, skills, or habits, as well as changes to existing structures. Learning occurs through experience and enables individuals to adapt to their environment. It happens either intentionally, such as studying or practicing, or unintentionally as an unconscious side effect while engaging in other tasks. A central aspect of effective learning is the formation of memory connections, which link different pieces of information and facilitate their retrieval.[32]
Thinking
[edit]Thinking is a mental activity in which concepts, ideas, and mental representations are considered and manipulated. Many cognitive processes fall into this category, including reasoning, concept formation, problem solving, and decision-making.[33]
Logical reasoning deals with information in the form of statements by inferring a conclusion from a set of premises. It proceeds in a rigorous and norm-governed manner to ensure that the conclusion is rationally convincing and supported by the premises.[34] Logical reasoning encompasses deductive and non-deductive reasoning. Deductive reasoning follows strict rules of inference, providing the strongest support: the conclusion of a deductive inference cannot be false if all the premises are true. An example is the inference from the premises "all men are mortal" and "Socrates is a man" to the conclusion "Socrates is mortal". Non-deductive reasoning makes a conclusion rationally convincing but does not guarantee its truth. For instance, inductive reasoning infers a general law from many individual observations, like concluding that all ravens are black based on observations of numerous black ravens. Abductive reasoning, another type of non-deductive reasoning, seeks the best explanation of a phenomenon. For example, a doctor uses abductive reasoning when they infer that a child has chickenpox as an explanation of the child's skin rash and fever.[35]

Problem-solving is a goal-directed activity that aims to overcome obstacles and arrive at a pre-defined objective. This happens, for instance, when determining the best route for an upcoming trip. Problem-solving starts with comprehending the problem, which typically involves an understanding of the initial state, the goal state, and the obstacles or constraints that hinder progress. Some problems are well-structured and have precise solution paths. For ill-structured problems, by contrast, it is not possible to determine which exact steps are successful. To find solutions, creativity in the form of divergent thinking generates many possible approaches. Convergent thinking evaluates the different options and eliminates unfeasible ones. Thought often relies on heuristics or general rules to find and compare possible solutions. Common heuristics are to divide a problem into several simpler subproblems and to adapt strategies that were successful for similar problems encountered earlier.[36]
Closely related to problem-solving, decision-making is the cognitive process of choosing between courses of action. To determine the best alternative, it weighs the different options by assessing their advantages and disadvantages, for example, by considering their positive and negative consequences. According to expected utility theory, a decision is rational if it selects the option with the highest expected utility, which is determined by the probability and the value of each consequence. To assess the probability of an outcome, people use various heuristics in everyday situations, such as the representativeness heuristic, the availability heuristic, and anchoring.[37]
Different forms of thinking rely on concepts, which are general ideas or mental representations to sort objects into classes, like the concepts animal and table. Concept formation is the process of acquiring a new concept by learning to identify its instances and grasping its relation to other concepts. This process helps individuals organize information and make sense of the world. Psychologists distinguish between logical and natural concepts. Logical concepts have precise definitions and rules of application, like the concept triangle. Natural concepts, by contrast, are based on resemblance but lack exact definitions or clear-cut boundaries, like the concept table.[38]
Language
[edit]A language is a structured communication system based on symbols and rules to share information and coordinate action, such as English, Spanish, and Japanese. Language plays a central role in everyday life, and some theorists argue that language affects numerous cognitive processes to some extent. For example, the Whorfian hypothesis and the thesis of linguistic relativity propose that language influences thought patterns and that speakers of distinct languages think differently.[a] Many cognitive processes are involved in the acquisition, comprehension, and production of linguistic expressions.[40]
Language acquisition happens naturally in childhood through exposure to a linguistic environment. It is a complex process since the system of spoken language is made up of several layers.[41] At the fundamental level are basic sounds or sound units. They do not have linguistic meaning themselves but are combined into words, which refer to diverse things and ideas.[b] Words are combined into sentences by following the rules of grammar. This system makes it possible to form and comprehend an infinite number of sentences based on a finite knowledge of a limited number of words and rules. The exact meaning of sentences usually depends also on the context in which they are used.[43] Although distinct languages can differ significantly in their general structure, there are some universal cognitive patterns that underlie all human languages.[44]
Language comprehension is the process of understanding spoken, written, and signed language. It involves the coordination of various cognitive skills to recognize words, consult memory to access their meanings, analyze sentence structures, and use contextual information to interpret their implications. Additional difficulties come from lexical and structural ambiguities, in which a word or a sentence can be associated with multiple meanings. To resolve ambiguities, individuals rely on background knowledge about the overall topic and the speaker to discern the intended meaning. As a result, language comprehension depends not only on bottom-up processes, which start with sensory information, but also on top-down processes, which integrate general knowledge and expectations. For example, expectations cause longer processing times if a familiar word occurs in a context where the reader did not expect it.[45]
While language comprehension seeks to uncover the meaning of pre-existing linguistic messages, language production involves the inverse process of generating linguistic expressions to convey thoughts. It starts with the formulation of a general idea one wants to express and a rough sentence pattern of how to communicate it. Speakers then cognitively search for words that match the concepts they wish to convey. This activity, known as lexicalization, is divided into two stages: the identification of an abstract semantic representation of the intended concept, followed by the retrieval of the phonological form needed to pronounce the word.[c] As speakers string together words to generate a sentence, they consider the grammatical category of each word, like the contrast between nouns and adjectives, to align with the intended overall sentence structure. Additionally, the context of the conversation and the assumed background knowledge of the audience influence the selection of words and sentence structure.[47]
Others
[edit]Cognitive processes can be conscious or unconscious. Conscious processes, such as attentively solving a math problem step by step or recalling a vivid memory, involve active awareness. Unconscious processes, such as low-level processes underlying face recognition and language processing, operate automatically in the background without the individual's awareness. Phenomenal consciousness involves a qualitative experience of mental phenomena, whereas access consciousness is an awareness of information that is available for use but not actively experienced at the moment.[48] Various theories of the cognitive function of consciousness have been proposed. They include the idea that consciousness integrates diverse forms of data and makes information globally available to various subsystems. Other theories argue that consciousness improves social interaction by fostering self-awareness in social contexts and that it allows for increased flexibility and control, particularly in novel situations.[49]
A related distinction is between controlled and automatic processes. Controlled processes are actively guided by the individual's intentions, like when a person deliberately shifts attention from one object of perception to another. These processes are flexible and adaptable to new situations but require a lot of cognitive resources. Automatic processes, by contrast, happen unconsciously, are effortless, and require fewer cognitive resources. By becoming familiar with a task, a cognitive process that was initially controlled can become automatic, thereby freeing up cognitive resources for other tasks. For example, as a novice driver becomes experienced, they can automatically handle the car and adapt to road and traffic conditions while gaining the ability to engage in a conversation at the same time.[50]

Consciousness is closely related to metacognition, which encompasses any knowledge or cognitive process that deals with information about cognition. Some forms of metacognition only manage or store information about other aspects of cognition, like knowing that one can recall a specific memory. Others play an active role in monitoring and regulating ongoing processes, like changing a problem-solving strategy upon realizing that the previous one was ineffective. Metacognitive skills tend to improve the performance of other cognitive skills, particularly when dealing with complex tasks.[51]
Social cognitions are mental activities through which individuals make sense of social phenomena. They include diverse types, such as the recognition of faces and facial expressions, the interpretation of intentions and behavior, and the evaluation of social cues and dynamics. A central topic in this field is theory of mind—the ability to understand others as mental beings with emotions, desires, and beliefs different from one's own. This ability allows individuals to think about and respond to the mental states of others.[52] Moral cognitions are a type of social cognition that make individuals aware of the moral significance of situations. They occur when people recognize and appreciate altruistic behavior or disapprove of malicious and harmful actions.[53] Cognitive psychologists also study the relation between cognition and emotion, for example, how emotions influence mental operations like attention and decision-making.[54]
Cognitive processes do not always function as they should and can lead to inaccuracies, either because of natural errors or cognitive disorders. Many cognitive operations use heuristics or mental shortcuts, which increase speed and reduce cognitive load but occasionally lead to mistakes. For instance, people typically rely on information that easily comes to mind when assessing a situation while disregarding knowledge that may be more relevant but is more difficult to retrieve.[55]
Cognitive disorders involve a more pronounced and consistent deviation from typical mental functioning. High-level cognitive abilities usually require the interaction of many low-level processes. Impairments affecting a specific subprocess often result in a partial malfunction of the high-level process while leaving the other functions of the high-level process intact.[56] For example, prosopagnosia is a perceptual disorder in which individuals lack the ability to recognize faces without impacting other visual abilities.[57] Similarly, anterograde amnesia is an impaired ability to form and recall new memories but leaves long-term memory intact. Disorders can affect a wide range of mental functions, including thought and language.[58] Some disorders involve a general cognitive decline that is not limited to one specific function. For instance, Alzheimer's disease is associated with a global, gradual impairment of memory, reasoning, and language.[59]
Theories
[edit]Various theories of the nature of cognition have been proposed. They provide conceptualizations and models to represent cognitive processes, explain empirical data, and predict experimental outcomes. Some theories propose interpretations of the overall cognitive architecture of the mind, seeking to explain cognition as a whole. Others suggest more limited models intended only for specific mental activities, such as theories of visual attention.[60]
Classical computationalism
[edit]Computationalism interprets cognition as a form of computation, highlighting the similarities between minds and computers. Classical computationalism understands cognitions as symbol manipulations and asserts that the brain represents information through symbols or strings of symbols. In this view, computations operate on strings to create new strings according to a set of mechanical rules. These rules only depend on the syntactic structure of the strings, meaning that cognitive processes have no understanding of what the symbols represent. For example, a simple calculator transforms the string "3 + 7" into the result "10" according to the mechanical rules of arithmetic without grasping the meaning of these numerals.[61] To handle complex data dealing with many entities and their interrelations, theorists often introduce more sophisticated symbol-based devices of knowledge representation, such as semantic nets, schemata, and frames.[62]
According to classical computationalism, any cognitive activity is at its fundamental level a formal symbol manipulation, including perception, reasoning, planning, and language processing. This perspective helps researchers analyze and distinguish cognitive processes by examining the types of representations involved and the mechanical rules followed.[63] The tri-level hypothesis divides this study into three levels of abstraction. The highest level analyzes the goal or purpose of a process, identifying the information it receives, the problem it aims to solve, and the result it produces. The intermediary level involves the decomposition of the process into individual steps, analyzing how the computation is performed or which algorithm is used. The most concrete level explores how the algorithm is implemented on a material level through neurological systems.[64]
Classical computationalism is closely related to the information-processing approach, which assumes that most cognitive activities are complex processes arising from the interaction of several subprocesses. Each process is characterized by the function it performs, which is connected to the input information it obtains, how it transforms this information, and the output it generates. Interaction happens when the output of one subprocess acts as the input for another. This approach is associated with serial models in which complex computations are divided into sequences of calculations where intermediary results are computed and transmitted until a final output is produced. It typically divides the mind into a small number of high-level systems responsible for different tasks, such as perception, memory, and reasoning. Information-processing models often rely on a hierarchical cognitive architecture where a central system integrates information from other units and formulates overall goals.[65]
The language of thought hypothesis is a version of classical computationalism arguing that thought happens through the medium of an internal linguistic system similar to natural languages, termed mentalese. It suggests that mental states like beliefs and desires are realized through mentalese sentences and that cognitive operations transform these sentences according to specific rules.[66]
Some symbol-based approaches use formal logic as a model of cognition. According to this view, representations have the form of statements, similar to declarative sentences. Computational processes are conceptualized as rules of inference, which take one or more sentences as input and produce a new sentence as output. For example, modus ponens is a rule of inference that, when applied to the premises "if it rains, then the ground is wet" and "it rains", results in the conclusion "the ground is wet".[67]
Certain rule-based approaches interpret cognition as the application of if-then rules to generate new representations. According to this outlook, a cognitive system is made up of many rules, each defined by one or more conditions together with an output procedure. If information stored in the working memory satisfies all the conditions of a rule then its output procedure is triggered and transfers a new representation to the working memory. This change may, in turn, prompt the execution of another rule, leading to a dynamic sequence of operations that can solve complex computational tasks. The cognitive architecture Soar is an example of this approach.[68]
Connectionism
[edit]Classical computationalism is typically contrasted with connectionism. As another form of computationalism, connectionism agrees that cognitions are computations but proposes a different cognitive architecture based on a complex network of nodes. The nodes are locally linked with each other, and the activity of each node depends on the inputs it receives from connected nodes.[69] The nodes are typically arranged in layers where information flows in one direction from earlier to later layers. The initial input layer of nodes receives information, such as sensory data, and passes it on to intermediary layers, where the main computation takes place. At the end of the process stands an output layer, which transmits the result to other systems. The behavior of each individual node is usually relatively simple: the node's activation value is determined by its weighted inputs and broadcast to nodes in the subsequent layer. Complex computations emerge as numerous nodes operate in parallel and interact across layers.[70]
Connectionism is closely related to computational neuroscience, and some researchers directly integrate neurological data about electrochemical activities of neurons into their theories. However, the more common approach is to use abstract, idealized models to avoid complexities introduced by neurophysiological mechanisms. Connectionism also shares various interests with the field of artificial intelligence, and the networks and learning algorithms proposed in one field often have similar applications in the other.[71]
Connectionists typically reject the serial and hierarchical models common in classical computationalism. Instead, they argue that cognition happens in parallel as countless neurons work simultaneously without a central control system guiding the process.[72]
Although connectionism is often presented as an alternative to computationalism, the two views do not necessarily exclude each other. For example, implementation connectionists argue that non-symbolic processes at the fundamental neural level implement symbolic processes at a more abstract level. According to this view, the cognitive system functions as a neural network at the fundamental level and as a symbol-processor when viewed from a more abstract perspective. This position contrasts with radical connectionism, which asserts that symbol-based approaches are fundamentally flawed since they misconstrue the nature of cognition.[73]
Representationalism and anti-representationalism
[edit]Both classical computationalism and common forms of connectionism[d] accept representationalism, which holds that information is stored in representations that depict the state of the world. Representations can take various forms, such as symbols, images, and concepts, as well as subsymbolic patterns used to model higher-level structures. Representationalists examine how cognitive systems encode, manipulate, and decode representations to construct internal models of the environment and predict changes.[75]
Anti-representationalists reject the idea that cognition is about representing the world through internal models. They assert that intelligence arises from the interaction between an organism and its environment rather than from internal processes alone. For example, approaches in behaviorism and situated robotics suggest an immediate link between perception and action: environmental stimuli are directly processed and translated into behavior following stimulus-response patterns. This outlook suggests that intelligent behavior emerges if an entity has stimulus-response patterns that match the external situation, even if the cognitive system responsible for these patterns has no representations of what the environment is like.[76]
Anti-representationalism is closely related to 4E cognition, a family of views critical of the prioritization of internal representations. 4E cognition examines the relation between mind, body, and environment, including embodied, embedded, extended, and enactive cognition. Embodied cognition is the idea that cognitive processes are grounded in bodily experience and cannot be understood in isolation from the organism's sensorimotor capacities. Embedded cognition asserts that cognitive effort and efficiency depend on physical and social environments. Extended cognition claims that the environment not only influences cognition but forms part of it, meaning that cognitive processes extend beyond internal neural activity to include external events. Enactive cognition asserts that cognition arises from the active interaction between organism and environment.[77]
Others
[edit]The modularity of mind is an approach that analyzes the cognitive system in terms of independent mental modules. Each module is an inborn mechanism that deals only with a specific type of information while being mostly unaware of the activities of other modules. Mental modules are primarily used to explain low-level cognitive processes, such as edge detection in visual perception.[78] The massive modularity hypothesis, by contrast, asserts that the mind is entirely composed of modules. According to this view, mental modules are also responsible for high-level cognitive processes by linking and integrating the outputs of low-level cognitive processes.[79]
Bayesianism applies probability theory to model cognitive processes such as learning, vision, and motor control. Its central idea is that representations of the environment can be more or less reliable and that the laws of probability theory describe how to integrate information and manage uncertainty.[80] Bayesianism is sometimes combined with predictive models. According to them, the brain creates and adjusts its internal representation of the environment by predicting what is going to happen, comparing the predictions to reality, and updating the internal representation accordingly.[81]
Dual process theory relies on the distinction between automatic and controlled processes to analyze cognitive phenomena. It conceptualizes them as two systems and proposes different models of their interaction. According to the default-interventionist model, the automatic system generates impressions while the controlled system monitors them and intervenes if it detects problems. The parallel-competitive model, by contrast, suggests that each system generates its own type of knowledge and that the outputs of the different systems compete with each other.[82]
Development
[edit]Cognitive development is the progressive growth of mental abilities from infancy through adulthood as individuals acquire improved cognitive skills and learn from experience. Some changes occur continuously as gradual improvements over extended periods. Others involve discontinuous transitions in the form of abrupt reorganizations resulting in qualitative changes. They are typically conceptualized as stages through which the individual passes.[83]
The nature versus nurture debate addresses the causes of cognitive development, contrasting the influences of inborn dispositions with the effects of environment and experience. Empiricists identify environment and experience as the main factors. This view is inspired by John Locke's idea that the mind of an infant is a blank slate that initially knows nothing of the world. According to this outlook, children learn through sense data by associating and generalizing impressions. Nativists, by contrast, argue that the mind has innate knowledge of abstract patterns. They suggest that this inborn framework organizes sensory information and guides learning.[84]
Various theories of the general mechanisms and stages of cognitive development have been proposed. Jean Piaget's theory divides cognitive development into four stages, each marked by an increasing capacity for abstraction and systematic understanding. In the initial sensory-motor stage, from birth to about two years, children explore sensory impressions and motor capacities, learning that things continue to exist when not observed. During the pre-operational stage, up to about age seven, children begin to understand and use symbols intuitively. In the following stages of concrete and formal operation, children first apply logical reasoning to concrete physical objects and then, from around age twelve, also to abstract ideas.[85]
In contrast to Piaget's approach, Lev Vygotsky's theory sees social interaction as the primary driver of cognitive development without clearly demarcated stages. It holds that children learn new skills by engaging in tasks under the guidance of knowledgeable others. This view emphasizes the role of language acquisition, suggesting that children internalize language and use it in private speech as a tool for planning, self-regulation, and problem solving.[86] Other approaches examine the role of different types of representation in cognitive development. For example, Annette Karmiloff-Smith proposes that cognitive developments involve a shift from implicit to explicit representations, making knowledge more complex and easier to access. A further theory, proposed by Robert S. Siegler, asserts that children use multiple cognitive strategies to solve problems and become more adept at selecting effective strategies as they develop.[87]
Cognitive development is most rapid during childhood. Some influences occur even before birth, due to factors like nutrition, maternal stress, and harmful substances like alcohol during pregnancy.[88] Developments in childhood affect all major cognitive faculties, including perception, memory, thinking, and language. Cognitive changes also happen during adulthood but are less pronounced. In old age, overall cognition declines, affecting reasoning, comprehension, novel problem solving, and memory.[89]
Non-human
[edit]Animal
[edit]Animal cognition refers to mechanisms through which animals acquire knowledge and transform information to engage in flexible, goal-oriented behavior. Animals use cognitive abilities for many daily tasks, for example, to find and recognize food, navigate territory, seek shelter, hunt prey, avoid predators, interact socially, communicate, learn new habits, and form long-term memories. Researchers examine cognition across diverse species, including mammals, birds, fish, and insects.[90] Animal cognition is typically specialized and domain-specific, meaning that a species may excel at particular tasks and contexts while performing poorly in others.[91]
Researchers examine various areas of animal cognition. They are interested in whether animals can form abstract concepts, expressed in the ability to understand a category and apply it to novel instances. For instance, chimpanzees can learn concepts of different numbers. As a result, they acquire various number-related abilities, like identifying collections containing a specific number of items. Another often-studied capacity is the power to form and remember a spatial map of the environment. This enables animals, such as jays, to navigate efficiently and choose the shortest route to a shelter or a feeding site. Research also addresses imitation, in which an animal copies the behavior of another animal. This facilitates the spread of useful skills, including tool-use.[92] Beyond animal cognition, some researchers also examine plant cognition, such as plant communication. For instance, maple trees release airborne chemicals to warn nearby trees of a herbivore attack, helping them prepare defensive responses.[93]
Comparative cognition is the study of the similarities and differences in cognitive abilities across species. It is an interdisciplinary field of inquiry that also considers evolutionary factors. For example, researchers investigate which cognitive traits are required to solve particular socioecological problems and how these traits evolved in different species. A traditionally dominant approach divides animal cognition into higher and lower psychological processes based on features like flexibility and complexity. However, it is controversial to what extent this contrast captures meaningful functional distinctions, and researchers risk anthropomorphic bias by interpreting animal cognition in terms of human traits.[94]
Artificial
[edit]Artificial cognition uses computational systems to emulate and model cognitive processes, like perception and reasoning, with central applications in artificial intelligence and robotics.[95] Artificial and human cognition have different strengths and weaknesses. For example, artificial cognition excels at rapidly processing vast datasets according to predefined algorithms. Human cognition, by contrast, is typically better suited to assess emotional significance and to find and evaluate solutions that require novel and creative thinking. These differences affect how the two forms of cognition are integrated with each other. For some applications, artificial cognition is used to assist human cognition. In aviation, for example, it helps monitor diverse metrics, allowing human pilots to focus on decision-making rather than data analysis. However, there are also cases where artificial cognition replaces human cognition, such as autonomous vehicle navigation.[96]
The field of artificial cognitive systems explores the possibility of autonomous machines with human-like cognition. This encompasses not only artificial intelligence at the level of individual tasks, such as object detection or language translation, but also the integration of diverse cognitive processes. The aim is an embodied system that can autonomously interact with its environment in real time. An artificial cognitive system can navigate its surroundings, set goals, devise means to achieve them, anticipate outcomes, adapt to circumstances, execute action plans, and learn from experience.[97] Artificial general intelligence, a closely related concept, refers to hypothetical systems that possess or surpass the full range of human mental abilities. It is controversial whether such a system can be fully realized since it would include not only computational capacities associated with logical reasoning but also emotion and phenomenal consciousness.[98]
In various fields
[edit]Many fields of inquiry study cognition, including psychology, neuroscience, and cognitive science. They examine different aspects of cognition, ranging from high-level computational processes to low-level neural mechanisms, and employ distinct methods to reach their conclusions. There is substantial overlap among these disciplines, and researchers from one field often rely on conceptual models or empirical findings from another.[99]
Psychology
[edit]Cognitive psychology examines mental activities responsible for cognitive phenomena and intelligent behavior. It uses the scientific method to study cognitive processes like perception, memory, reasoning, and language. Although mental activities mediate between stimuli and responses, they are not directly observable, which poses a methodological challenge for researchers. It typically forces them to rely on indirect methods for empirical validation, usually in the form of models or theories that have testable predictions. For example, if a theory predicts a specific behavior in a particular situation, then empirical observations can determine if outcomes align with those predictions.[100]
Cognitive psychologists use diverse methods to gather data for empirical validation. Experimental methods create controlled situations in which certain factors, called independent variables, can be changed. The main interest is in how these factors influence individuals in the situation. By measuring the effects, called dependent variables, researchers aim to identify causal relations between independent and dependent variables. Correlational methods, by contrast, measure the degree of association between two variables without proving that one causes the other. Cognitive psychologists also integrate methods from other disciplines, including neuroimaging techniques and computational simulations. Early cognitive psychologists made extensive use of introspection, in which researchers examine and reflect on their own experiences to understand mental processes. The choice of method depends a lot on the studied cognitive process, such as the differences between research on perception and memory.[101]
Neuroscience
[edit]Cognitive neuroscience investigates how the nervous system gives rise to cognition. It is particularly interested in the brain, covering both micro-scale studies of individual neurons and synapses as well as the macro-scale analyses of interactions between brain regions. For example, cognitive neuroscientists study the brain areas responsible for processes like memory and decision-making, exploring how they represent and transform information and communicate with each other on a biological level. They also examine how these processes are influenced by neurotransmitters—signalling molecules that affect information exchange between neurons.[102]
Cognitive neuroscientists employ neuroimaging techniques to study brain activity, including electroencephalography (EEG), positron emission tomography (PET), and functional magnetic resonance imaging (fMRI). These techniques visualize neural processes by measuring phenomena such as electrical or magnetic changes and blood flow across different brain areas, indicating local activity levels. Researchers compare the activation patterns associated with specific mental tasks to learn how regional brain activity correlates with cognitive demands. Another method examines patients with brain damage. It seeks to understand the role of a brain area indirectly by studying how cognition changes if the area is impaired.[103]
A different approach, common in computational or theoretical neuroscience, is to design computational or mathematical models of cognitive systems. This approach explores possible explanations of observed mental phenomena and neural activities by modeling and simulating underlying brain mechanisms.[104]
Cognitive science
[edit]Cognitive science is an interdisciplinary field informed by psychology, neuroscience, philosophy, linguistics, and artificial intelligence. It seeks to integrate the insights of these disciplines and provide a unified perspective. To this end, it adopts a common conceptualization of minds as information processors, understanding cognition as the manipulation of internal representations.[105]
To bridge disciplinary and methodological divides, it identifies distinct levels of analysis corresponding to different degrees of abstraction. For example, neuroscientific analysis of the electrochemical activity of brain areas belongs to a concrete level that deals with the biological mechanisms performing computations. By contrast, the psychological study of the roles of and interactions between high-level processes, such as perception, memory, and reasoning, adopts an abstract perspective. Cognitive scientists seek to coordinate empirical experiments with theoretical models to produce testable theories that link the different levels.[106]
Other fields
[edit]Many fields of inquiry have subareas dedicated to cognitive phenomena. For example, cognitive linguistics is a subarea of linguistics that investigates the relation between language and cognition. It studies the cognitive processes responsible for grammar, conceptualization, language comprehension, and language production.[107] Similarly, cognitive anthropology examines the connection between culture and cognition, conceptualizing culture as a system of knowledge, beliefs, and values. It analyzes and compares cultures from this perspective to identify distinctive features of particular societies and the universal patterns shared by all.[108] Cognitive sociology, a related field, explores how sociocultural factors shape cognitive activity.[109] Other fields include cognitive archaeology, cognitive architecture, and cognitive biology.[110]
Various branches of philosophy address cognition, including philosophy of mind and epistemology. Philosophers of mind examine the nature of cognition and related concepts, such as mind, representation, and consciousness.[111] They are particularly interested in the relation between mind and matter[112] and the problem of how physical states can give rise to conscious experience.[113] Epistemologists seek to understand the nature and limits of knowledge. They further ask under what conditions cognitive processes, like perception and reasoning, lead to knowledge.[114] Philosophers also reflect on the fields of inquiry studying cognition. They explore how psychologists, neuroscientists, and cognitive scientists conduct research and ask about the fundamental concepts and background assumptions underlying these fields.[115]
Education studies is the field of inquiry examining the nature, purposes, practices, and outcomes of education. It investigates the cognitive development of children and studies how knowledge is transmitted, acquired, and organized.[116] This discipline overlaps with cognitive psychology and cognitive science because of its interest in learning, covering diverse cognitive processes and skills, such as conceptual change, metacognition, mental models, logical reasoning, and problem solving.[117] Cognitive learning theories conceptualize learning in terms of information processing. They analyze how information is encoded, retrieved, and transformed, often with the goal of devising educational practices that optimize learning. For example, cognitive load theory identifies limitations of working memory as a bottleneck that impedes learning and proposes educational practices to avoid cognitive overload.[118]
Psychometrics examines how mental attributes can be measured. It includes the discussion of cognitive tests, which are methods designed to assess cognitive abilities. For example, IQ tests include tasks involving logical reasoning, verbal comprehension, spatial thinking, and working memory to estimate overall cognitive performance.[119] The Montreal Cognitive Assessment and the mini–mental state examination are tests to detect cognitive impairment, such as deficits in memory, attention, and language.[120]
Cognitive enhancement encompasses diverse ways to improve mental performance, including biochemical, behavioral, and physical factors. Biochemical approaches include balanced nutrition and psychoactive substances like caffeine and amphetamine. Behavioral enhancements cover physical exercise, sufficient sleep, meditation, and cognitive strategies, such as mnemonics. Physical enhancements encompass invasive and non-invasive brain stimulation as well as neurofeedback and wearable devices.[121]
Cognitive behavior therapy is a psychotherapy that analyzes psychological problems in terms of cognitive processes. It argues that maladaptive automatic thoughts, cognitive distortions, and unhealthy core beliefs lead to inaccurate interpretations of events and emotional distress. For example, if a person has an unconscious core belief that they are fundamentally inadequate, they may misinterpret a neutral interaction as a rejection. Cognitive behavior therapists seek to restructure problematic attitudes by helping clients recognize and modify dysfunctional thought patterns.[122]
Many topics in computer science are relevant to cognition, particularly for approaches that understand cognition in terms of computation and information processing. Theories of computation examine the nature of computation and explore which problems can be solved computationally. Computer architecture has parallels with cognitive architecture, providing models of how different components interact to form a functional system. Another overlap concerns the field of knowledge representation, in which computer scientists explore formal data structures that make knowledge accessible to computational processes. Artificial intelligence is the capacity of certain computer systems to perform tasks requiring intelligence, such as reasoning and problem-solving. It includes the field of machine learning, through which computer systems can acquire new abilities not explicitly coded by programmers. The field of cognitive robotics integrates insights from these subfields to create intelligent robots.[123]
Early studies
[edit]Despite the word cognitive itself dating back to the 15th century,[124] attention to cognitive processes came about more than eighteen centuries earlier, beginning with Aristotle (384–322 BCE) and his interest in the inner workings of the mind and how they affect the human experience. Aristotle focused on cognitive areas pertaining to memory, perception, and mental imagery. He placed great importance on ensuring that his studies were based on empirical evidence, that is, scientific information that is gathered through observation and conscientious experimentation.[125] Two millennia later, the groundwork for modern concepts of cognition was laid during the Enlightenment by thinkers such as John Locke and Dugald Stewart who sought to develop a model of the mind in which ideas were acquired, remembered and manipulated.[126]
During the very early nineteenth century cognitive models were developed both in philosophy—particularly by authors writing about the philosophy of mind—and in medicine, especially by physicians seeking to understand how to cure madness. In Britain, these models were studied in the academy by scholars such as James Sully at University College London, and they were even used by politicians when considering the national Elementary Education Act 1870 (33 & 34 Vict. c. 75).[127]
As psychology emerged as a burgeoning field of study in Europe, whilst also gaining a following in America, scientists such as Wilhelm Wundt, Herman Ebbinghaus, Mary Whiton Calkins, and William James would offer their contributions to the study of human cognition.[citation needed]
Early theorists
[edit]Wilhelm Wundt (1832–1920) emphasized the notion of what he called introspection: examining the inner feelings of an individual. With introspection, the subject had to be careful with describing their feelings in the most objective manner possible in order for Wundt to find the information scientific.[128][129] Though Wundt's contributions are by no means minimal, modern psychologists find his methods to be too subjective and choose to rely on more objective procedures of experimentation to make conclusions about the human cognitive process.[130]
Hermann Ebbinghaus (1850–1909) conducted cognitive studies that mainly examined the function and capacity of human memory. Ebbinghaus developed his own experiment in which he constructed over 2,000 syllables made out of nonexistent words (for instance, 'EAS'). He then examined his own personal ability to learn these non-words. He purposely chose non-words as opposed to real words to control for the influence of pre-existing experience on what the words might symbolize, thus enabling easier recollection of them.[128][131] Ebbinghaus observed and hypothesized a number of variables that may have affected his ability to learn and recall the non-words he created. One of the reasons, he concluded, was the amount of time between the presentation of the list of stimuli and the recitation or recall of the same. Ebbinghaus was the first to record and plot a "learning curve" and a "forgetting curve".[132]
Mary Whiton Calkins (1863–1930) was an influential American pioneer in the realm of psychology. Her work also focused on human memory capacity. A common theory, called the recency effect, can be attributed to the studies that she conducted.[133] The recency effect, also discussed in the subsequent experiment section, is the tendency for individuals to be able to accurately recollect the final items presented in a sequence of stimuli. Calkin's theory is closely related to the aforementioned study and conclusion of the memory experiments conducted by Hermann Ebbinghaus.[134]
William James (1842–1910) is another pivotal figure in the history of cognitive science. James was quite discontent with Wundt's emphasis on introspection and Ebbinghaus' use of nonsense stimuli. He instead chose to focus on the human learning experience in everyday life and its importance to the study of cognition. James' most significant contribution to the study and theory of cognition was his textbook Principles of Psychology which preliminarily examines aspects of cognition such as perception, memory, reasoning, and attention.[134]
René Descartes (1596–1650) was a seventeenth-century philosopher who came up with the phrase "Cogito, ergo sum", which means "I think, therefore I am." He took a philosophical approach to the study of cognition and the mind, with his Meditations he wanted people to meditate along with him to come to the same conclusions as he did but in their own free cognition.[135]
See also
[edit]- Cognitive Abilities Screening Instrument
- Cognitive biology
- Cognitive computing
- Cognitive holding power
- Cognitive liberty
- Cognitive musicology
- Cognitive psychology
- Cognitive science
- Cognitivism
- Comparative cognition
- Embodied cognition
- Cognitive shuffle
- Information processing technology and aging
- Mental chronometry – i.e., the measuring of cognitive processing speed
- Nootropic
- Outline of human intelligence – a list of traits, capacities, models, and research fields of human intelligence, and more.
- Outline of thought – a list that identifies many types of thoughts, types of thinking, aspects of thought, related fields, and more.
- Shared intentionality
- Sex differences in cognition
References
[edit]Notes
[edit]- ^ There is no academic consensus on the nature and extent of this influence.[39]
- ^ The smallest linguistic units to carry meaning are morphemes. Some morphemes can function independently as words, while others only occur as modifications, such as prefixes.[42]
- ^ For example, this two-stage model analyzes tip of the tongue phenomena as a success of the first stage and a failure of the second stage, having identified the meaning but being unable to retrieve the phonological form from memory.[46]
- ^ It is debated whether all forms of connectionism involve representations.[74]
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Further reading
[edit]- Ardila A (2018). Historical Development of Human Cognition. A Cultural-Historical Neuropsychological Perspective. Springer. ISBN 978-9811068867.
- Coren S, Ward LM, Enns JT (1999). Sensation and Perception. Harcourt Brace. p. 9. ISBN 978-0-470-00226-1.
- Lycan WG, ed. (1999). Mind and Cognition: An Anthology (2nd ed.). Malden, MA: Blackwell Publishing.
- Stanovich, Keith (2009). What Intelligence Tests Miss: The Psychology of Rational Thought. New Haven (CT): Yale University Press. ISBN 978-0-300-12385-2.
- Stix, Gary, "Thinking without Words: Cognition doesn't require language, it turns out" (interview with Evelina Fedorenko, a cognitive neuroscientist at the Massachusetts Institute of Technology), Scientific American, vol. 332, no. 3 (March 2025), pp. 86–88. "[I]n the tradition of linguist Noam Chomsky... we use language for thinking: to think is why language evolved in our species. [However, evidence that thought and language are separate systems is found, for example, by] looking at deficits in different abilities – for instance, in people with brain damage... who have impairments in language – some form of aphasia [ – yet are clearly able to think]." (p. 87.) Conversely, "large language models such as GPT-2... do language very well [but t]hey're not so good at thinking, which... nicely align[s] with the idea that the language system by itself is not what makes you think." (p. 88.)
External links
[edit]- Cognition An international journal publishing theoretical and experimental papers on the study of the mind.
- Information on music cognition, University of Amsterdam
- Cognitie.NL Archived 2011-10-19 at the Wayback Machine Information on cognition research, Netherlands Organization for Scientific Research (NWO) and University of Amsterdam (UvA)
- Emotional and Decision Making Lab, Carnegie Mellon, EDM Lab
- The Limits of Human Cognition – an article describing the evolution of mammals' cognitive abilities
- Half-heard phone conversations reduce cognitive performance
- The limits of intelligence Douglas Fox, Scientific American, 14 June 14, 2011.