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Heterogeneous Multi-agent Zero-Shot Coordination by Coevolution (2208.04957v2)

Published 9 Aug 2022 in cs.NE, cs.AI, cs.LG, and cs.MA

Abstract: Generating agents that can achieve zero-shot coordination (ZSC) with unseen partners is a new challenge in cooperative multi-agent reinforcement learning (MARL). Recently, some studies have made progress in ZSC by exposing the agents to diverse partners during the training process. They usually involve self-play when training the partners, implicitly assuming that the tasks are homogeneous. However, many real-world tasks are heterogeneous, and hence previous methods may be inefficient. In this paper, we study the heterogeneous ZSC problem for the first time and propose a general method based on coevolution, which coevolves two populations of agents and partners through three sub-processes: pairing, updating and selection. Experimental results on various heterogeneous tasks highlight the necessity of considering the heterogeneous setting and demonstrate that our proposed method is a promising solution for heterogeneous ZSC tasks.

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Authors (8)
  1. Ke Xue (28 papers)
  2. Yutong Wang (50 papers)
  3. Cong Guan (12 papers)
  4. Lei Yuan (34 papers)
  5. Haobo Fu (14 papers)
  6. Qiang Fu (159 papers)
  7. Chao Qian (90 papers)
  8. Yang Yu (385 papers)
Citations (14)