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Lloyd, Kevin; Sanborn, Adam; Leslie, David; Lewandowsky, Stephan – Cognitive Science, 2019
Algorithms for approximate Bayesian inference, such as those based on sampling (i.e., Monte Carlo methods), provide a natural source of models of how people may deal with uncertainty with limited cognitive resources. Here, we consider the idea that individual differences in working memory capacity (WMC) may be usefully modeled in terms of the…
Descriptors: Short Term Memory, Bayesian Statistics, Cognitive Ability, Individual Differences
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Sewell, David K.; Lewandowsky, Stephan – Journal of Experimental Psychology: General, 2012
The concept of attention is central to theorizing in learning as well as in working memory. However, research to date has yet to establish how attention as construed in one domain maps onto the other. We investigate two manifestations of attention in category- and cue-learning to examine whether they might provide common ground between learning…
Descriptors: Attention, Short Term Memory, Cognitive Structures, Associative Learning
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Lewandowsky, Stephan – Journal of Experimental Psychology: Learning, Memory, and Cognition, 2011
Working memory is crucial for many higher-level cognitive functions, ranging from mental arithmetic to reasoning and problem solving. Likewise, the ability to learn and categorize novel concepts forms an indispensable part of human cognition. However, very little is known about the relationship between working memory and categorization, and…
Descriptors: Short Term Memory, Classification, Individual Differences, Attention
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Lewandowsky, Stephan; Yang, Lee-Xieng; Newell, Ben R.; Kalish, Michael L. – Journal of Experimental Psychology: Learning, Memory, and Cognition, 2012
Working memory is crucial for many higher level cognitive functions, ranging from mental arithmetic to reasoning and problem solving. Likewise, the ability to learn and categorize novel concepts forms an indispensable part of human cognition. However, very little is known about the relationship between working memory and categorization. This…
Descriptors: Program Effectiveness, Classification, Structural Equation Models, Short Term Memory
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Craig, Stewart; Lewandowsky, Stephan; Little, Daniel R. – Journal of Experimental Psychology: Learning, Memory, and Cognition, 2011
The assumption in some current theories of probabilistic categorization is that people gradually attenuate their learning in response to unavoidable error. However, existing evidence for this error discounting is sparse and open to alternative interpretations. We report 2 probabilistic-categorization experiments in which we investigated error…
Descriptors: Evidence, Feedback (Response), Associative Learning, Classification
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Sewell, David K.; Lewandowsky, Stephan – Cognitive Psychology, 2011
Knowledge restructuring refers to changes in the strategy with which people solve a given problem. Two types of knowledge restructuring are supported by existing category learning models. The first is a relearning process, which involves incremental updating of knowledge as learning progresses. The second is a recoordination process, which…
Descriptors: Classification, Psychology, Cognitive Processes, Models
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Little, Daniel R.; Lewandowsky, Stephan – Journal of Experimental Psychology: Human Perception and Performance, 2009
In probabilistic categorization, also known as multiple cue probability learning (MCPL), people learn to predict a discrete outcome on the basis of imperfectly valid cues. In MCPL, normatively irrelevant cues are usually ignored, which stands in apparent conflict with recent research in deterministic categorization that has shown that people…
Descriptors: Cues, Information Retrieval, Classification, Probability
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Little, Daniel R.; Lewandowsky, Stephan – Journal of Experimental Psychology: Learning, Memory, and Cognition, 2009
Despite the fact that categories are often composed of correlated features, the evidence that people detect and use these correlations during intentional category learning has been overwhelmingly negative to date. Nonetheless, on other categorization tasks, such as feature prediction, people show evidence of correlational sensitivity. A…
Descriptors: Feedback (Response), Cues, Attention, Classification
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Lewandowsky, Stephan – Psychological Review, 1995
The recent hybrid model of categorization, Attention Learning Covering Map (ALCOVE), combines desirable properties of exemplar models with a connectionist architecture and learning rule. An important property is the apparent ability of ALCOVE to account for base-rate neglect. ALCOVE's base-rate neglect predictions are reexamined, and their…
Descriptors: Classification, Learning, Prediction, Theories
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Yang, Lee-Xieng; Lewandowsky, Stephan – Journal of Experimental Psychology: Learning, Memory, and Cognition, 2004
The authors present 2 experiments that establish the presence of knowledge partitioning in perceptual categorization. Many participants learned to rely on a context cue, which did not predict category membership but identified partial boundaries, to gate independent partial categorization strategies. When participants partitioned their knowledge,…
Descriptors: Classification, Perception, Cues, Psychological Studies