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国家自然科学基金(s61074058)

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发文基金:中国博士后科学基金国家教育部博士点基金国家自然科学基金更多>>
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Cooperative learning with joint state value approximation for multi-agent systems被引量:1
2013年
This paper relieves the'curse of dimensionality' problem, which becomes intractable when scaling reinforcement learning to multi-agent systems. This problem is aggravated exponentially as the number of agents increases, resulting in large memory requirement and slowness in learning speed. For cooperative systems which widely exist in multi-agent systems, this paper proposes a new multi-agent Q-learning algorithm based on decomposing the joint state and joint action learning into two learning processes, which are learning individual action and the maximum value of the joint state approximately. The latter process considers others' actions to insure that the joint action is optimal and supports the updating of the former one. The simulation results illustrate that the proposed algorithm can learn the optimal joint behavior with smaller memory and faster learning speed compared with friend-Q learning and independent learning.
Xin CHENGang CHENWeihua CAOMin WU
关键词:多代理系统多智能体系统Q学习算法
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