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Original Research ARTICLE

Decision making under uncertainty: a neural model based on partially observable Markov decision processes

  • Department of Computer Science and Engineering and Neurobiology and Behavior Program, University of Washington, Seattle, WA, USA

A fundamental problem faced by animals is learning to select actions based on noisy sensory information and incomplete knowledge of the world. It has been suggested that the brain engages in Bayesian inference during perception but how such probabilistic representations are used to select actions has remained unclear. Here we propose a neural model of action selection and decision making based on the theory of partially observable Markov decision processes (POMDPs). Actions are selected based not on a single “optimal” estimate of state but on the posterior distribution over states (the “belief” state). We show how such a model provides a unified framework for explaining experimental results in decision making that involve both information gathering and overt actions. The model utilizes temporal difference (TD) learning for maximizing expected reward. The resulting neural architecture posits an active role for the neocortex in belief computation while ascribing a role to the basal ganglia in belief representation, value computation, and action selection. When applied to the random dots motion discrimination task, model neurons representing belief exhibit responses similar to those of LIP neurons in primate neocortex. The appropriate threshold for switching from information gathering to overt actions emerges naturally during reward maximization. Additionally, the time course of reward prediction error in the model shares similarities with dopaminergic responses in the basal ganglia during the random dots task. For tasks with a deadline, the model learns a decision making strategy that changes with elapsed time, predicting a collapsing decision threshold consistent with some experimental studies. The model provides a new framework for understanding neural decision making and suggests an important role for interactions between the neocortex and the basal ganglia in learning the mapping between probabilistic sensory representations and actions that maximize rewards.

Keywords: probabilistic models, Bayesian inference, decision theory, reinforcement learning, temporal difference learning, parietal cortex, basal ganglia, dopamine

Citation: Rao RPN (2010) Decision making under uncertainty: a neural model based on partially observable Markov decision processes. Front. Comput. Neurosci. 4:146. doi: 10.3389/fncom.2010.00146

Received: 19 May 2010; Accepted: 24 October 2010;
Published online: 24 November 2010.

Edited by:

Peter Dayan, University College London, UK

Reviewed by:

Nathaniel D. Daw, New York University, USA
Alex Pouget, University of Rochester, USA

Copyright: © 2010 Rao. This is an open-access article subject to an exclusive license agreement between the authors and the Frontiers Research Foundation, which permits unrestricted use, distribution, and reproduction in any medium, provided the original authors and source are credited.

*Correspondence: Rajesh P. N. Rao, Department of Computer Science and Engineering, University of Washington, Seattle, WA 98195-2350, USA.e-mail: rao@cs.washington.edu

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