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Abstract

The nature of working memory capacity (WMC) has been a highly contested topic among cognitive scientists. Some advocate for the discrete nature of this construct, fixed to a set number of independent slots, each capable of storing a single chunk of bound information. Others advocate for a continuous limit, guided by a pool of immediately available resources spent across the to-be-remembered items. To understand the nature of WMC, it was first essential to separate capacity from other factors, such as performance consistency, which may impact overall WM performance. Recent work by Schor et al., (2020, Psychonomic Bulletin & Review, 27[5], 1006-1013) has provided a method for separating these constructs within a single visual array task. The present study used this statistical model to extract partial information, defined as accurate recall of a correct color, but not location, at a rate greater than expected through guessing. The successful memory of this information would demonstrate that capacity does not rely on the existence of empty slots, which discrete slot model advocates argue, are necessary for successful storage and recall of items. The present study found that participants were able to successfully recall partial information at a rate significantly greater than chance, but not beyond the individual working memory capacity limit. These findings help provide additional support for the discrete resource slot model, while simultaneously casting doubt on its strong object slot model alternative.

Details

Title
Partial recall: Implications for the discrete slot limit of working memory capacity
Author
Schor, Daniel 1 ; Wilcox, Kenneth Tyler 1 ; Gibson, Bradley S 1 

 Department of Psychology, University of Notre Dame, 390 Corbett Family Hall, Notre Dame, IN, USA 
Pages
1746-1754
Publication year
2023
Publication date
Jul 2023
Publisher
Springer Nature B.V.
ISSN
19433921
e-ISSN
1943393X
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2846296338
Copyright
Copyright Springer Nature B.V. Jul 2023