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Multiple timescales of learning indicated by changes in evidence-accumulation processes during perceptual decision-making.


ABSTRACT: Evidence accumulation models have enabled strong advances in our understanding of decision-making, yet their application to examining learning has not been common. Using data from participants completing a dynamic random dot-motion direction discrimination task across four days, we characterized alterations in two components of perceptual decision-making (Drift Diffusion Model drift rate and response boundary). Continuous-time learning models were applied to characterize trajectories of performance change, with different models allowing for varying dynamics. The best-fitting model included drift rate changing as a continuous, exponential function of cumulative trial number. In contrast, response boundary changed within each daily session, but in an independent manner across daily sessions. Our results highlight two different processes underlying the pattern of behavior observed across the entire learning trajectory, one involving a continuous tuning of perceptual sensitivity, and another more variable process describing participants' threshold of when enough evidence is present to act.

SUBMITTER: Cochrane A 

PROVIDER: S-EPMC10250420 | biostudies-literature | 2023 Jun

REPOSITORIES: biostudies-literature

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Multiple timescales of learning indicated by changes in evidence-accumulation processes during perceptual decision-making.

Cochrane Aaron A   Sims Chris R CR   Bejjanki Vikranth R VR   Green C Shawn CS   Bavelier Daphne D  

NPJ science of learning 20230608 1


Evidence accumulation models have enabled strong advances in our understanding of decision-making, yet their application to examining learning has not been common. Using data from participants completing a dynamic random dot-motion direction discrimination task across four days, we characterized alterations in two components of perceptual decision-making (Drift Diffusion Model drift rate and response boundary). Continuous-time learning models were applied to characterize trajectories of performa  ...[more]

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