AI Article Synopsis

  • Growing evidence suggests that ensemble information influences visual working memory for individual items.
  • Harrison, McMaster, and Bays (2021) discovered that people's ability to detect changes in memorized items only matched a level predicted by a model that didn't consider ensemble effects.
  • This new research demonstrates that ensemble statistics do enhance performance in memory tasks, even with data from just one item, and redefines optimal strategies in visual change detection, showing that people can use ensemble information effectively.

Article Abstract

Growing empirical evidence shows that ensemble information (e.g., the average feature or feature variance of a set of objects) affects visual working memory for individual items. Recently, Harrison, McMaster, and Bays (2021) used a change detection task to test whether observers explicitly rely on ensemble representations to improve their memory for individual objects. They found that sensitivity to simultaneous changes in all memorized items (which also globally changed set summary statistics) rarely exceeded a level predicted by the so-called optimal summation model within the signal-detection framework. This model implies simple integration of evidence for change from all individual items and no additional evidence coming from ensemble. Here, we argue that performance at the level of optimal summation does not rule out the use of ensemble information. First, in two experiments, we show that, even if evidence from only one item is available at test, the statistics of the whole memory set affect performance. Second, we argue that optimal summation itself can be conceptually interpreted as one of the strategies of holistic, ensemble-based decision. We also redefine the reference level for the item-based strategy as the so-called "minimum rule," which predicts performance far below the optimum. We found that that both our and Harrison et al. (2021)'s observers consistently outperformed this level. We conclude that observers can rely on ensemble information when performing visual change detection. Overall, our work clarifies and refines the use of signal-detection analysis in measuring and modeling working memory.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10902873PMC
http://dx.doi.org/10.1167/jov.24.2.10DOI Listing

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