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基于多智能体强化学习的对抗博弈技术综述
引用本文:张耐民,蔡秉辰,于浛,刘海阔. 基于多智能体强化学习的对抗博弈技术综述[J]. 海军航空工程学院学报, 2024, 39(4): 395-410
作者姓名:张耐民  蔡秉辰  于浛  刘海阔
作者单位:北京宇航系统工程研究所,北京 100076;北京理工大学自动化学院,北京 100081
摘    要:多智能体对抗系统是多方博弈的复杂系统。近年来,很多研究聚焦于用强化学习解决多智能体对抗博弈问题。文章从多智能体强化学习的角度对智能博弈对抗的算法进行综述。首先,简要介绍了对多智能体强化学习及博弈论;然后,提出多智能体强化学习的 4项关键技术难点,并提出相关解决方法;最后,归纳多智能体强化学习的前沿研究方向,总结了研究热点与存在的挑战。综述为后续的研究打下基础,为使用多智能体强化学习解决博弈对抗问题提供思路。

关 键 词:多智能体  强化学习  博弈论

Review of Adversarial Game Techniques Based on Multi-Agent Reinforcement Learning
ZHANG Naimin,CAI Bingchen,YU Han,LIU Haikuo. Review of Adversarial Game Techniques Based on Multi-Agent Reinforcement Learning[J]. Journal of Naval Aeronautical Engineering Institute, 2024, 39(4): 395-410
Authors:ZHANG Naimin  CAI Bingchen  YU Han  LIU Haikuo
Affiliation:Beijing Institute of Astronautical Systems Engineering, Beijing, 100076, China; School of Automation, Beijing Institute of Technology, Beijing, 100081, China
Abstract:Multi-agent adversarial systems are complex multi-perty game systems, and in recent years, many studies have focused on using reinforcement learning to solve multi-agent adversarial game problems. This article reviews intelligent game adversarial algorithms from the perspective of multi-agent reinforcement learning. First, a brief introduction to multi-agent reinforcement learning and game theory is given; then, four key technical difficulties of multi-agent reinforce-ment learning are proposed, and related solutions are sorted out; finally, the frontier research direction of multi-agent rein-forcement learning is summarized, and three research hotspots and challenges are concluded. This review lays a founda-tion for the subsequent research and provides ideas for solving the game antagonism problem by using multi-agent rein-forcement learning.
Keywords:multi-agent   reinforcement learning   game theory
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