Rethinking formal models of partially observable multiagent decision making

Artificial Intelligence(2022)

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摘要
Multiagent decision-making in partially observable environments is usually modelled as either an extensive-form game (EFG) in game theory or a partially observable stochastic game (POSG) in multiagent reinforcement learning (MARL). One issue with the current situation is that while most practical problems can be modelled in both formalisms, the relationship of the two models is unclear, which hinders the transfer of ideas between the two communities. A second issue is that while EFGs have recently seen significant algorithmic progress, their classical formalization is unsuitable for efficient presentation of the underlying ideas, such as those around decomposition.
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关键词
Imperfect information game,Multiagent reinforcement learning,Extensive form game,Partially-observable stochastic game,Public information,Decomposition,Imperfect information game,Multiagent reinforcement learning,Extensive form game,Partially-observable stochastic game,Public information,Decomposition
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