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  1. Rationalizable Irrationalities of Choice.Peter Dayan - 2014 - Topics in Cognitive Science 6 (2):204-228.
    Although seemingly irrational choice abounds, the rules governing these mis‐steps that might provide hints about the factors limiting normative behavior are unclear. We consider three experimental tasks, which probe different aspects of non‐normative choice under uncertainty. We argue for systematic statistical, algorithmic, and implementational sources of irrationality, including incomplete evaluation of long‐run future utilities, Pavlovian actions, and habits, together with computational and statistical noise and uncertainty. We suggest structural and functional adaptations that minimize their maladaptive effects.
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  • The Mindset of Cognitive Science.Rick Dale - 2021 - Cognitive Science 45 (4):e12952.
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  • Guest editorial — Introduction.Andy Clark & Rudi Lutz - 1990 - AI and Society 4 (1):3-16.
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  • The case for connectionism.William Bechtel - 1993 - Philosophical Studies 71 (2):119-54.
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  • Currents in connectionism.William Bechtel - 1993 - Minds and Machines 3 (2):125-153.
    This paper reviews four significant advances on the feedforward architecture that has dominated discussions of connectionism. The first involves introducing modularity into networks by employing procedures whereby different networks learn to perform different components of a task, and a Gating Network determines which network is best equiped to respond to a given input. The second consists in the use of recurrent inputs whereby information from a previous cycle of processing is made available on later cycles. The third development involves developing (...)
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  • Value units make the right connections.Dana H. Ballard - 1986 - Behavioral and Brain Sciences 9 (1):107-120.
    The cerebral cortex is a rich and diverse structure that is the basis of intelligent behavior. One of the deepest mysteries of the function of cortex is that neural processing times are only about one hundred times as fast as the fastest response times for complex behavior. At the very least, this would seem to indicate that the cortex does massive amounts of parallel computation.This paper explores the hypothesis that an important part of the cortex can be modeled as a (...)
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  • Cortical connections and parallel processing: Structure and function.Dana H. Ballard - 1986 - Behavioral and Brain Sciences 9 (1):67-90.
    The cerebral cortex is a rich and diverse structure that is the basis of intelligent behavior. One of the deepest mysteries of the function of cortex is that neural processing times are only about one hundred times as fast as the fastest response times for complex behavior. At the very least, this would seem to indicate that the cortex does massive amounts of parallel computation.This paper explores the hypothesis that an important part of the cortex can be modeled as a (...)
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  • Putting together connectionism – again.Paul Smolensky - 1988 - Behavioral and Brain Sciences 11 (1):59-74.
    A set of hypotheses is formulated for a connectionist approach to cognitive modeling. These hypotheses are shown to be incompatible with the hypotheses underlying traditional cognitive models. The connectionist models considered are massively parallel numerical computational systems that are a kind of continuous dynamical system. The numerical variables in the system correspond semantically to fine-grained features below the level of the concepts consciously used to describe the task domain. The level of analysis is intermediate between those of symbolic cognitive models (...)
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  • Use of the Gibbs sampler in expert systems.Jeremy York - 1992 - Artificial Intelligence 56 (1):115-130.
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  • Optimization in “self‐modeling” complex adaptive systems.Richard A. Watson, C. L. Buckley & Rob Mills - 2011 - Complexity 16 (5):17-26.
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  • A Distributed Connectionist Production System.David S. Touretzky & Geoffrey E. Hinton - 1988 - Cognitive Science 12 (3):423-466.
    DCPS is a connectionist production system interpreter that uses distributed representations. As a connectionist model it consists of many simple, richly interconnected neuron‐like computing units that cooperate to solve problems in parallel. One motivation for constructing DCPS was to demonstrate that connectionist models are capable of representing and using explicit rules. A second motivation was to show how “coarse coding” or “distributed representations” can be used to construct a working memory that requires far fewer units than the number of different (...)
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  • Learning Orthographic Structure With Sequential Generative Neural Networks.Alberto Testolin, Ivilin Stoianov, Alessandro Sperduti & Marco Zorzi - 2016 - Cognitive Science 40 (3):579-606.
    Learning the structure of event sequences is a ubiquitous problem in cognition and particularly in language. One possible solution is to learn a probabilistic generative model of sequences that allows making predictions about upcoming events. Though appealing from a neurobiological standpoint, this approach is typically not pursued in connectionist modeling. Here, we investigated a sequential version of the restricted Boltzmann machine, a stochastic recurrent neural network that extracts high-order structure from sensory data through unsupervised generative learning and can encode contextual (...)
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  • A parallel network that learns to play backgammon.G. Tesauro & T. J. Sejnowski - 1989 - Artificial Intelligence 39 (3):357-390.
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  • Interactions dominate the dynamics of visual cognition.Damian G. Stephen & Daniel Mirman - 2010 - Cognition 115 (1):154-165.
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  • The constituent structure of connectionist mental states: A reply to Fodor and Pylyshyn.Paul Smolensky - 1988 - Southern Journal of Philosophy 26 (S1):137-161.
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  • On the proper treatment of connectionism.Paul Smolensky - 1988 - Behavioral and Brain Sciences 11 (1):1-23.
    A set of hypotheses is formulated for a connectionist approach to cognitive modeling. These hypotheses are shown to be incompatible with the hypotheses underlying traditional cognitive models. The connectionist models considered are massively parallel numerical computational systems that are a kind of continuous dynamical system. The numerical variables in the system correspond semantically to fine-grained features below the level of the concepts consciously used to describe the task domain. The level of analysis is intermediate between those of symbolic cognitive models (...)
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  • A Connectionist Approach to Knowledge Representation and Limited Inference.Lokendra Shastri - 1988 - Cognitive Science 12 (3):331-392.
    Although the connectionist approach has lead to elegant solutions to a number of problems in cognitive science and artificial intelligence, its suitability for dealing with problems in knowledge representation and inference has often been questioned. This paper partly answers this criticism by demonstrating that effective solutions to certain problems in knowledge representation and limited inference can be found by adopting a connectionist approach. The paper presents a connectionist realization of semantic networks, that is, it describes how knowledge about concepts, their (...)
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  • A Modular Neural Network Model of Concept Acquisition.Philippe G. Schyns - 1991 - Cognitive Science 15 (4):461-508.
    Previous neural network models of concept learning were mainly implemented with supervised learning schemes. However, studies of human conceptual memory have shown that concepts may be learned without a teacher who provides the category name to associate with exemplars. A modular neural network architecture that realizes concept acquisition through two functionally distinct operations, categorizing and naming, is proposed as an alternative. An unsupervised algorithm realizes the categorizing module by constructing representations of categories compatible with prototype theory. The naming module associates (...)
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  • A Modular Neural Network Model of Concept Acquisition.Philippe G. Schyns - 1991 - Cognitive Science 15 (4):461-508.
    Previous neural network models of concept learning were mainly implemented with supervised learning schemes. However, studies of human conceptual memory have shown that concepts may be learned without a teacher who provides the category name to associate with exemplars. A modular neural network architecture that realizes concept acquisition through two functionally distinct operations, categorizing and naming, is proposed as an alternative. An unsupervised algorithm realizes the categorizing module by constructing representations of categories compatible with prototype theory. The naming module associates (...)
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  • Parallel Distributed Processing at 25: Further Explorations in the Microstructure of Cognition.Timothy T. Rogers & James L. McClelland - 2014 - Cognitive Science 38 (6):1024-1077.
    This paper introduces a special issue of Cognitive Science initiated on the 25th anniversary of the publication of Parallel Distributed Processing (PDP), a two-volume work that introduced the use of neural network models as vehicles for understanding cognition. The collection surveys the core commitments of the PDP framework, the key issues the framework has addressed, and the debates the framework has spawned, and presents viewpoints on the current status of these issues. The articles focus on both historical roots and contemporary (...)
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  • A simple model from a powerful framework that spans levels of analysis.Timothy T. Rogers & James L. McClelland - 2008 - Behavioral and Brain Sciences 31 (6):729-749.
    The commentaries reflect three core themes that pertain not just to our theory, but to the enterprise of connectionist modeling more generally. The first concerns the relationship between a cognitive theory and an implemented computer model. Specifically, how does one determine, when a model departs from the theory it exemplifies, whether the departure is a useful simplification or a critical flaw? We argue that the answer to this question depends partially upon the model's intended function, and we suggest that connectionist (...)
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  • Recursive distributed representations.Jordan B. Pollack - 1990 - Artificial Intelligence 46 (1-2):77-105.
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  • Six principles for biologically based computational models of cortical cognition.Randall C. O'Reilly - 1998 - Trends in Cognitive Sciences 2 (11):455-462.
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  • Connectionist learning of belief networks.Radford M. Neal - 1992 - Artificial Intelligence 56 (1):71-113.
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  • Learning Continuous Probability Distributions with Symmetric Diffusion Networks.Javier R. Movellan & James L. McClelland - 1993 - Cognitive Science 17 (4):463-496.
    In this article we present symmetric diffusion networks, a family of networks that instantiate the principles of continuous, stochastic, adaptive and interactive propagation of information. Using methods of Markovion diffusion theory, we formalize the activation dynamics of these networks and then show that they can be trained to reproduce entire multivariate probability distributions on their outputs using the contrastive Hebbion learning rule (CHL). We show that CHL performs gradient descent on an error function that captures differences between desired and obtained (...)
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  • Cortical hierarchies, sleep, and the extraction of knowledge from memory.Bruce L. McNaughton - 2010 - Artificial Intelligence 174 (2):205-214.
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  • Putting knowledge in its place: A scheme for programming parallel processing structures on the fly.James L. McClelland - 1985 - Cognitive Science 9 (1):113-146.
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  • Asymmetric interference in 3‐ to 4‐month‐olds' sequential category learning.Denis Mareschal, Paul C. Quinn & Robert M. French - 2002 - Cognitive Science 26 (3):377-389.
    Three‐ to 4‐month‐old infants show asymmetric exclusivity in the acquisition of cat and dog perceptual categories. The cat perceptual category excludes dog exemplars, but the dog perceptual category does not exclude cat exemplars. We describe a connectionist autoencoder model of perceptual categorization that shows the same asymmetries as infants. The model predicts the presence of asymmetric retroactive interference when infants acquire cat and dog categories sequentially. A subsequent experiment conducted with 3‐ to 4‐month‐olds verifies the predicted pattern of looking time (...)
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  • Operationalizing the Relation Between Affect and Cognition With the Somatic Transform.Neil J. MacKinnon & Jesse Hoey - 2021 - Emotion Review 13 (3):245-256.
    This article introduces the somatic transform that operationalizes the relation between affect and cognition at the psychological level of analysis by capitalizing on the relation between the cogni...
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  • How much Do People Remember? Some Estimates of the Quantity of Learned Information in Long‐term Memory.Thomas K. Landauer - 1986 - Cognitive Science 10 (4):477-493.
    How much information from experience does a normal adult remember? The “functional information content” of human memory was estimated in several ways. The methods depend on measured rates of input and loss from very long‐ term memory and on analyses of the informational demands of human memory‐based performance. Estimates ranged around 109 bits. It is speculated that the flexible and creative retrieval of facts by humans is a function of a large ratio of “hardware” capacity to functional storage requirements.
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  • Symbols, neurons, soap-bubbles and the neural computation underlying cognition.Robert W. Kentridge - 1994 - Minds and Machines 4 (4):439-449.
    A wide range of systems appear to perform computation: what common features do they share? I consider three examples, a digital computer, a neural network and an analogue route finding system based on soap-bubbles. The common feature of these systems is that they have autonomous dynamics — their states will change over time without additional external influence. We can take advantage of these dynamics if we understand them well enough to map a problem we want to solve onto them. Programming (...)
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  • Gibbs sampling in Bayesian networks.Tomas Hrycej - 1990 - Artificial Intelligence 46 (3):351-363.
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  • Connectionist learning procedures.Geoffrey E. Hinton - 1989 - Artificial Intelligence 40 (1-3):185-234.
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  • A Developmental Neural Model of Visual Word Perception.Richard M. Golden - 1986 - Cognitive Science 10 (3):241-276.
    A neurally plausible model of how the process of visually perceiving a letter in the context of a word is learned, and how such processing occurs in adults is proposed. The model consists of a collection of abstract letter feature detector neurons and their interconnections. The model also includes a learning rule that specifies how these interconnections evolve with experience. The interconnections between neurons can be interpreted as representing the spatially redundant, sequentially redundant, and transgraphemic information in letter string displays. (...)
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  • A Functional Contextual Account of Background Knowledge in Categorization: Implications for Artificial General Intelligence and Cognitive Accounts of General Knowledge.Darren J. Edwards, Ciara McEnteggart & Yvonne Barnes-Holmes - 2022 - Frontiers in Psychology 13.
    Psychology has benefited from an enormous wealth of knowledge about processes of cognition in relation to how the brain organizes information. Within the categorization literature, this behavior is often explained through theories of memory construction called exemplar theory and prototype theory which are typically based on similarity or rule functions as explanations of how categories emerge. Although these theories work well at modeling highly controlled stimuli in laboratory settings, they often perform less well outside of these settings, such as explaining (...)
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