Learning Multi-agent Action Coordination via Electing First-move Agent
Learning to coordinate actions among agents is essential in complicated multi-agent systems. Prior works are constrained mainly by the assumption that all agents act simultaneously, and asynchronous action coordination between agents is rarely considered. This paper introduces a bi-level multi-agent...
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Zusammenfassung: | Learning to coordinate actions among agents is essential in complicated
multi-agent systems. Prior works are constrained mainly by the assumption that
all agents act simultaneously, and asynchronous action coordination between
agents is rarely considered. This paper introduces a bi-level multi-agent
decision hierarchy for coordinated behavior planning. We propose a novel
election mechanism in which we adopt a graph convolutional network to model the
interaction among agents and elect a first-move agent for asynchronous
guidance. We also propose a dynamically weighted mixing network to effectively
reduce the misestimation of the value function during training. This work is
the first to explicitly model the asynchronous multi-agent action coordination,
and this explicitness enables to choose the optimal first-move agent. The
results on Cooperative Navigation and Google Football demonstrate that the
proposed algorithm can achieve superior performance in cooperative
environments. Our code is available at
\url{https://github.com/Amanda-1997/EFA-DWM}. |
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DOI: | 10.48550/arxiv.2110.08126 |