Reward learning and statistical learning independently influence attentional priority of salient distractors in visual search

Atten Percept Psychophys. 2022 Jul;84(5):1446-1459. doi: 10.3758/s13414-021-02426-7. Epub 2022 Jan 10.

Abstract

Existing research demonstrates different ways in which attentional prioritization of salient nontarget stimuli is shaped by prior experience: Reward learning renders signals of high-value outcomes more likely to capture attention than signals of low-value outcomes, whereas statistical learning can produce attentional suppression of the location in which salient distractor items are likely to appear. The current study combined manipulations of the value and location associated with salient distractors in visual search to investigate whether these different effects of selection history operate independently or interact to determine overall attentional prioritization of salient distractors. In Experiment 1, high-value and low-value distractors most frequently appeared in the same location; in Experiment 2, high-value and low-value distractors typically appeared in distinct locations. In both experiments, effects of distractor value and location were additive, suggesting that attention-promoting effects of value and attention-suppressing effects of statistical location-learning independently modulate overall attentional priority. Our findings are consistent with a view that sees attention as mediated by a common priority map that receives and integrates separate signals relating to physical salience and value, with signal suppression based on statistical learning determined by physical salience, but not incentive salience.

Keywords: Attention; Reward; Statistical learning; Suppression; Visual search.

MeSH terms

  • Attention*
  • Humans
  • Learning*
  • Reaction Time
  • Reward