AI RESEARCH
Partially Observable Multi-Agent Reinforcement Learning with Information Sharing
arXiv CS.LG
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ArXi:2308.08705v5 Announce Type: replace We study provable multi-agent reinforcement learning (RL) in the general framework of partially observable stochastic games (POSGs). To circumvent the known hardness results and the use of computationally intractable oracles, we advocate leveraging the potential \emph{information-sharing} among agents, a common practice in empirical multi-agent RL, and a standard model for multi-agent control systems with communication.