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The impact of learning on perceptual decisions and its implication for speed-accuracy tradeoffs

André G. Mendonça, Jan Drugowitsch, M. Inês Vicente, Eric DeWitt, Alexandre Pouget, Zachary F. Mainen

2020Nature Communications64 citationsDOIOpen Access PDF

Abstract

In standard models of perceptual decision-making, noisy sensory evidence is considered to be the primary source of choice errors and the accumulation of evidence needed to overcome this noise gives rise to speed-accuracy tradeoffs. Here, we investigated how the history of recent choices and their outcomes interact with these processes using a combination of theory and experiment. We found that the speed and accuracy of performance of rats on olfactory decision tasks could be best explained by a Bayesian model that combines reinforcement-based learning with accumulation of uncertain sensory evidence. This model predicted the specific pattern of trial history effects that were found in the data. The results suggest that learning is a critical factor contributing to speed-accuracy tradeoffs in decision-making, and that task history effects are not simply biases but rather the signatures of an optimal learning strategy.

Topics & Concepts

Computer scienceReinforcement learningPerceptionSensory systemMachine learningTask (project management)Bayesian probabilityArtificial intelligenceNoise (video)Bayesian inferenceCognitive psychologyPsychologyNeuroscienceImage (mathematics)ManagementEconomicsOlfactory and Sensory Function StudiesVisual perception and processing mechanismsNeural dynamics and brain function
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