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HAVEN: Hierarchical Cooperative Multi-Agent Reinforcement Learning with Dual Coordination Mechanism (2110.07246v3)

Published 14 Oct 2021 in cs.MA, cs.AI, and cs.LG

Abstract: Recently, some challenging tasks in multi-agent systems have been solved by some hierarchical reinforcement learning methods. Inspired by the intra-level and inter-level coordination in the human nervous system, we propose a novel value decomposition framework HAVEN based on hierarchical reinforcement learning for fully cooperative multi-agent problems. To address the instability arising from the concurrent optimization of policies between various levels and agents, we introduce the dual coordination mechanism of inter-level and inter-agent strategies by designing reward functions in a two-level hierarchy. HAVEN does not require domain knowledge and pre-training, and can be applied to any value decomposition variant. Our method achieves desirable results on different decentralized partially observable Markov decision process domains and outperforms other popular multi-agent hierarchical reinforcement learning algorithms.

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Authors (5)
  1. Zhiwei Xu (84 papers)
  2. Yunpeng Bai (35 papers)
  3. Bin Zhang (227 papers)
  4. Dapeng Li (32 papers)
  5. Guoliang Fan (23 papers)
Citations (19)

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