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Multi-Agent Inverse Reinforcement Learning for Certain General-Sum Stochastic Games

Journal of Artificial Intelligence Research - United States
doi 10.1613/jair.1.11541
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Abstract

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Categories
Artificial Intelligence
Date

October 15, 2019

Authors
Xiaomin LinStephen C. AdamsPeter A. Beling
Publisher

AI Access Foundation


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