Literature DB >> 24015956

Discrete-slots models of visual working-memory response times.

Christopher Donkin1, Robert M Nosofsky, Jason M Gold, Richard M Shiffrin.   

Abstract

Much recent research has aimed to establish whether visual working memory (WM) is better characterized by a limited number of discrete all-or-none slots or by a continuous sharing of memory resources. To date, however, researchers have not considered the response-time (RT) predictions of discrete-slots versus shared-resources models. To complement the past research in this field, we formalize a family of mixed-state, discrete-slots models for explaining choice and RTs in tasks of visual WM change detection. In the tasks under investigation, a small set of visual items is presented, followed by a test item in 1 of the studied positions for which a change judgment must be made. According to the models, if the studied item in that position is retained in 1 of the discrete slots, then a memory-based evidence-accumulation process determines the choice and the RT; if the studied item in that position is missing, then a guessing-based accumulation process operates. Observed RT distributions are therefore theorized to arise as probabilistic mixtures of the memory-based and guessing distributions. We formalize an analogous set of continuous shared-resources models. The model classes are tested on individual subjects with both qualitative contrasts and quantitative fits to RT-distribution data. The discrete-slots models provide much better qualitative and quantitative accounts of the RT and choice data than do the shared-resources models, although there is some evidence for "slots plus resources" when memory set size is very small. PsycINFO Database Record (c) 2013 APA, all rights reserved.

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Year:  2013        PMID: 24015956      PMCID: PMC4036228          DOI: 10.1037/a0034247

Source DB:  PubMed          Journal:  Psychol Rev        ISSN: 0033-295X            Impact factor:   8.934


  40 in total

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  30 in total

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5.  Individual differences in the allocation of attention to items in working memory: Evidence from pupillometry.

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6.  Dissociations of the number and precision of visual short-term memory representations in change detection.

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10.  Verbal labeling, gradual decay, and sudden death in visual short-term memory.

Authors:  Chris Donkin; Robert Nosofsky; Jason Gold; Richard Shiffrin
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