Distinct contributions of attention and working memory to visual statistical learning and ensemble processing.

Michelle G Hall, Jason B Mattingley, Paul E Dux
Author Information
  1. Michelle G Hall: School of Psychology.
  2. Jason B Mattingley: School of Psychology.
  3. Paul E Dux: School of Psychology.

Abstract

The brain exploits redundancies in the environment to efficiently represent the complexity of the visual world. One example of this is ensemble processing, which provides a statistical summary of elements within a set (e.g., mean size). Another is statistical learning, which involves the encoding of stable spatial or temporal relationships between objects. It has been suggested that ensemble processing over arrays of oriented lines disrupts statistical learning of structure within the arrays (Zhao, Ngo, McKendrick, & Turk-Browne, 2011). Here we asked whether ensemble processing and statistical learning are mutually incompatible, or whether this disruption might occur because ensemble processing encourages participants to process the stimulus arrays in a way that impedes statistical learning. In Experiment 1, we replicated Zhao and colleagues' finding that ensemble processing disrupts statistical learning. In Experiments 2 and 3, we found that statistical learning was unimpaired by ensemble processing when task demands necessitated (a) focal attention to individual items within the stimulus arrays and (b) the retention of individual items in working memory. Together, these results are consistent with an account suggesting that ensemble processing and statistical learning can operate over the same stimuli given appropriate stimulus processing demands during exposure to regularities.

MeSH Term

Adult
Attention
Female
Humans
Learning
Male
Memory, Short-Term
Pattern Recognition, Visual
Psychomotor Performance
Young Adult

Word Cloud

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