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Science / Dynamic programming / Markov processes / Stochastic control / Control theory / Partially observable Markov decision process / Automated planning and scheduling / Multi-agent system / Markov decision process / Game theory / Statistics / Artificial intelligence


Using Iterated Reasoning to Predict Opponent Strategies Michael Wunder Michael Kaisers Rutgers University
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Document Date: 2012-04-29 08:04:26


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John Robert Yaros / M. Costa-Gomes / V / Michael Littman / Strategies Michael Wunder Michael Kaisers / Michael Littman John Robert Yaros / Ai / Michael Kaisers / Michael Wunder / /

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