Efficient Multi-agent Communication via Self-supervised Information Aggregation Cong Guan

Neural Information Processing Systems 

Utilizing messages from teammates can improve coordination in cooperative Multi-agent Reinforcement Learning (MARL). To obtain meaningful information for decision-making, previous works typically combine raw messages generated by teammates with local information as inputs for policy. However, neglecting the aggregation of multiple messages poses great inefficiency for policy learning.

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