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Learning to Maximize Reward Rate: A Model Based on Semi-Markov Decision Processes

Frontiers in Neuroscience - Switzerland
doi 10.3389/fnins.2014.00101
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Abstract

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Categories
Neuroscience
Date

May 23, 2014

Authors
Arash KhodadadiPegah FakhariJerome R. Busemeyer
Publisher

Frontiers Media SA


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