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Brady, Timothy F.; Tenenbaum, Joshua B. – Psychological Review, 2013
When remembering a real-world scene, people encode both detailed information about specific objects and higher order information like the overall gist of the scene. However, formal models of change detection, like those used to estimate visual working memory capacity, assume observers encode only a simple memory representation that includes no…
Descriptors: Short Term Memory, Visual Perception, Change, Identification
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Orhan, A. Emin; Jacobs, Robert A. – Psychological Review, 2013
Experimental evidence suggests that the content of a memory for even a simple display encoded in visual short-term memory (VSTM) can be very complex. VSTM uses organizational processes that make the representation of an item dependent on the feature values of all displayed items as well as on these items' representations. Here, we develop a…
Descriptors: Short Term Memory, Visual Perception, Cognitive Processes, Bias
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Lee, Michael D.; Pooley, James P. – Psychological Review, 2013
The scale-invariant memory, perception, and learning (SIMPLE) model developed by Brown, Neath, and Chater (2007) formalizes the theoretical idea that scale invariance is an important organizing principle across numerous cognitive domains and has made an influential contribution to the literature dealing with modeling human memory. In the context…
Descriptors: Recall (Psychology), Memory, Models, Equations (Mathematics)
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Fennell, John; Baddeley, Roland – Psychological Review, 2012
Empirical research has shown that when making choices based on probabilistic options, people behave as if they overestimate small probabilities, underestimate large probabilities, and treat positive and negative outcomes differently. These distortions have been modeled using a nonlinear probability weighting function, which is found in several…
Descriptors: Bayesian Statistics, Probability, Psychology, Selection
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Tybur, Joshua M.; Lieberman, Debra; Kurzban, Robert; DeScioli, Peter – Psychological Review, 2013
Interest in and research on disgust has surged over the past few decades. The field, however, still lacks a coherent theoretical framework for understanding the evolved function or functions of disgust. Here we present such a framework, emphasizing 2 levels of analysis: that of evolved function and that of information processing. Although there is…
Descriptors: Cognitive Processes, Psychological Patterns, Motivation, Decision Making
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Regenwetter, Michel; Dana, Jason; Davis-Stober, Clintin P. – Psychological Review, 2011
Transitivity of preferences is a fundamental principle shared by most major contemporary rational, prescriptive, and descriptive models of decision making. To have transitive preferences, a person, group, or society that prefers choice option "x" to "y" and "y" to "z" must prefer "x" to…
Descriptors: Decision Making, Selection, Attitudes, Models
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Singh, Manish; Feldman, Jacob – Psychological Review, 2012
Lim and Leek (2012) presented a formalization of information along object contours, which they argued was an alternative to the approach taken in our article (Feldman & Singh, 2005). Here, we summarize the 2 approaches, showing that--notwithstanding Lim and Leek's (2012) critical rhetoric--their approach is substantially identical to ours,…
Descriptors: Geometry, Mathematics Education, Theories, Identification
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Birnbaum, Michael H. – Psychological Review, 2011
This article contrasts 2 approaches to analyzing transitivity of preference and other behavioral properties in choice data. The approach of Regenwetter, Dana, and Davis-Stober (2011) assumes that on each choice, a decision maker samples randomly from a mixture of preference orders to determine whether "A" is preferred to "B." In contrast, Birnbaum…
Descriptors: Evidence, Testing, Computation, Probability
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Goodman, Noah D.; Ullman, Tomer D.; Tenenbaum, Joshua B. – Psychological Review, 2011
The very early appearance of abstract knowledge is often taken as evidence for innateness. We explore the relative learning speeds of abstract and specific knowledge within a Bayesian framework and the role for innate structure. We focus on knowledge about causality, seen as a domain-general intuitive theory, and ask whether this knowledge can be…
Descriptors: Causal Models, Logical Thinking, Cognitive Development, Bayesian Statistics
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Tsetsos, Konstantinos; Usher, Marius; Chater, Nick – Psychological Review, 2010
A central puzzle for theories of choice is that people's preferences between options can be reversed by the presence of decoy options (that are not chosen) or by the presence of other irrelevant options added to the choice set. Three types of reversal effect reported in the decision-making literature, the attraction, compromise, and similarity…
Descriptors: Decision Making, Models, Evaluation, Prediction
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Busemeyer, Jerome R.; Pothos, Emmanuel M.; Franco, Riccardo; Trueblood, Jennifer S. – Psychological Review, 2011
A quantum probability model is introduced and used to explain human probability judgment errors including the conjunction and disjunction fallacies, averaging effects, unpacking effects, and order effects on inference. On the one hand, quantum theory is similar to other categorization and memory models of cognition in that it relies on vector…
Descriptors: Fundamental Concepts, Quantum Mechanics, Probability, Physics
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Fiedler, Klaus; Freytag, Peter; Meiser, Thorsten – Psychological Review, 2009
The term "pseudocontingency" (PC) denotes the logically unwarranted inference of a contingency between 2 variables X and Y from information other than pairs of x[subscript i], y[subscript i] observations, namely, the variables' univariate base rates as assessed in 1 or more ecological contexts. The authors summarize recent experimental evidence…
Descriptors: Cognitive Processes, Adjustment (to Environment), Inferences, Logical Thinking
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Mukherjee, Kanchan – Psychological Review, 2010
This article presents a dual system model (DSM) of decision making under risk and uncertainty according to which the value of a gamble is a combination of the values assigned to it independently by the affective and deliberative systems. On the basis of research on dual process theories and empirical research in Hsee and Rottenstreich (2004) and…
Descriptors: Behavior Patterns, Figurative Language, Individual Differences, Decision Making
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Killeen, Peter R. – Psychological Review, 2009
Goods remote in temporal, spatial, or social distance, or in likelihood, exert less control over our behavior than those more proximate. The decay of influence with distance, of perennial interest to behavioral economists, has had a renaissance in the study of delay discounting. By developing discount functions from marginal utilities, this…
Descriptors: Delay of Gratification, Probability, Behavioral Science Research, Influences
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Gershman, Samuel J.; Blei, David M.; Niv, Yael – Psychological Review, 2010
A. Redish et al. (2007) proposed a reinforcement learning model of context-dependent learning and extinction in conditioning experiments, using the idea of "state classification" to categorize new observations into states. In the current article, the authors propose an interpretation of this idea in terms of normative statistical inference. They…
Descriptors: Conditioning, Statistical Inference, Inferences, Bayesian Statistics
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