Literature DB >> 33427198

Lapses in perceptual decisions reflect exploration.

Sashank Pisupati1,2, Lital Chartarifsky-Lynn1,2, Anup Khanal1, Anne K Churchland3.   

Abstract

Perceptual decision-makers often display a constant rate of errors independent of evidence strength. These 'lapses' are treated as a nuisance arising from noise tangential to the decision, e.g. inattention or motor errors. Here, we use a multisensory decision task in rats to demonstrate that these explanations cannot account for lapses' stimulus dependence. We propose a novel explanation: lapses reflect a strategic trade-off between exploiting known rewarding actions and exploring uncertain ones. We tested this model's predictions by selectively manipulating one action's reward magnitude or probability. As uniquely predicted by this model, changes were restricted to lapses associated with that action. Finally, we show that lapses are a powerful tool for assigning decision-related computations to neural structures based on disruption experiments (here, posterior striatum and secondary motor cortex). These results suggest that lapses reflect an integral component of decision-making and are informative about action values in normal and disrupted brain states.
© 2021, Pisupati et al.

Entities:  

Keywords:  audition; computational modeling; decision-making; neuroscience; rat; vision

Mesh:

Year:  2021        PMID: 33427198      PMCID: PMC7846276          DOI: 10.7554/eLife.55490

Source DB:  PubMed          Journal:  Elife        ISSN: 2050-084X            Impact factor:   8.140


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