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Individual Reward Assisted Multi-Agent Reinforcement Learning
2022
International Conference on Machine Learning
In many real-world multi-agent systems, the sparsity of team rewards often makes it difficult for an algorithm to successfully learn a cooperative team policy. At present, the common way for solving this problem is to design some dense individual rewards for the agents to guide the cooperation. However, most existing works utilize individual rewards in ways that do not always promote teamwork and sometimes are even counterproductive. In this paper, we propose Individual Reward Assisted Team
dblp:conf/icml/WangZHWZGHLF22
fatcat:stsyw32o35dl7labxrf7gd5k4u