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Game-Theoretic Multiagent Reinforcement Learning

Created by
  • Haebom

Author

Yaodong Yang, Chengdong Ma, Zihan Ding, Stephen McAleer, Chi Jin, Jun Wang, Tuomas Sandholm

Outline

This paper provides a comprehensive overview of the field of multi-agent reinforcement learning (MARL). Noting that existing MARL research fails to adequately address recent developments since 2010, we aim to provide a unique overview encompassing both game-theoretic foundations and recent advances. By comprehensively assessing the fundamental principles and recent research trends of MARL from a game-theoretic perspective, we aim to provide a valuable resource for both newcomers to the field and experts.

Takeaways, Limitations

Takeaways: Provides a comprehensive understanding of the game theoretical foundations and latest trends in multi-agent reinforcement learning. Provides useful information for both new researchers and experts. Also suggests future research directions.
Limitations: Since this paper was published in 2020, it may not fully reflect recent research trends since then. In-depth analysis of specific MARL algorithms or application areas may be limited.
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