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Main Authors: Esmaily, Jamal, Moran, Rani, Roudi, Yasser, Bahrami, Bahador
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2408.06080
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author Esmaily, Jamal
Moran, Rani
Roudi, Yasser
Bahrami, Bahador
author_facet Esmaily, Jamal
Moran, Rani
Roudi, Yasser
Bahrami, Bahador
contents Although evidence integration to the boundary model has successfully explained a wide range of behavioral and neural data in decision making under uncertainty, how animals learn and optimize the boundary remains unresolved. Here, we propose a model-free reinforcement learning algorithm for perceptual decisions under uncertainty that dispenses entirely with the concepts of decision boundary and evidence accumulation. Our model learns whether to commit to a decision given the available evidence or continue sampling information at a cost. We reproduced the canonical features of perceptual decision-making such as dependence of accuracy and reaction time on evidence strength, modulation of speed-accuracy trade-off by payoff regime, and many others. By unifying learning and decision making within the same framework, this model can account for unstable behavior during training as well as stabilized post-training behavior, opening the door to revisiting the extensive volumes of discarded training data in the decision science literature.
format Preprint
id arxiv_https___arxiv_org_abs_2408_06080
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Sequential sampling without comparison to boundary through model-free reinforcement learning
Esmaily, Jamal
Moran, Rani
Roudi, Yasser
Bahrami, Bahador
Neural and Evolutionary Computing
Although evidence integration to the boundary model has successfully explained a wide range of behavioral and neural data in decision making under uncertainty, how animals learn and optimize the boundary remains unresolved. Here, we propose a model-free reinforcement learning algorithm for perceptual decisions under uncertainty that dispenses entirely with the concepts of decision boundary and evidence accumulation. Our model learns whether to commit to a decision given the available evidence or continue sampling information at a cost. We reproduced the canonical features of perceptual decision-making such as dependence of accuracy and reaction time on evidence strength, modulation of speed-accuracy trade-off by payoff regime, and many others. By unifying learning and decision making within the same framework, this model can account for unstable behavior during training as well as stabilized post-training behavior, opening the door to revisiting the extensive volumes of discarded training data in the decision science literature.
title Sequential sampling without comparison to boundary through model-free reinforcement learning
topic Neural and Evolutionary Computing
url https://arxiv.org/abs/2408.06080