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Stochastic control / Multi-agent systems / Markov models / Partially observable Markov decision process / Reinforcement learning / Markov decision process / Agent-based model / Markov chain / Affect / Statistics / Markov processes / Dynamic programming
Date: 2012-04-17 07:47:49
Stochastic control
Multi-agent systems
Markov models
Partially observable Markov decision process
Reinforcement learning
Markov decision process
Agent-based model
Markov chain
Affect
Statistics
Markov processes
Dynamic programming

Influence-based Abstraction for Multiagent Systems

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