DCMAC:通过上限训练实现需求感知的定制多代理通信

Dongkun Huo, Huateng Zhang, Yixue Hao, Yuanlin Ye, Long Hu, Rui Wang, Min Chen
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引用次数: 0

摘要

高效的通信可以提高协作式多代理强化学习的整体性能。一种常见的方法是通过完全通信来共享观察结果,这会导致巨大的通信开销。现有的工作试图通过基于本地信息的团队模型来感知全局状态。然而,他们忽略了预测产生的不确定性可能会导致训练困难。为了解决这个问题,我们提出了一种需求感知定制多代理通信(DCMAC)协议,它使用上限训练来获得理想的策略。利用需求解析模块,代理可以解释对队友发送本地信息的收益,并利用交叉关注机制通过计算需求与本地观察之间的相关性生成定制信息。此外,我们的方法还能适应代理的通信资源,并通过使用联合观测训练出的理想策略来加快训练进度。实验结果表明,DCMAC 在无约束和通信受限场景下的表现都明显优于基线算法。
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DCMAC: Demand-aware Customized Multi-Agent Communication via Upper Bound Training
Efficient communication can enhance the overall performance of collaborative multi-agent reinforcement learning. A common approach is to share observations through full communication, leading to significant communication overhead. Existing work attempts to perceive the global state by conducting teammate model based on local information. However, they ignore that the uncertainty generated by prediction may lead to difficult training. To address this problem, we propose a Demand-aware Customized Multi-Agent Communication (DCMAC) protocol, which use an upper bound training to obtain the ideal policy. By utilizing the demand parsing module, agent can interpret the gain of sending local message on teammate, and generate customized messages via compute the correlation between demands and local observation using cross-attention mechanism. Moreover, our method can adapt to the communication resources of agents and accelerate the training progress by appropriating the ideal policy which is trained with joint observation. Experimental results reveal that DCMAC significantly outperforms the baseline algorithms in both unconstrained and communication constrained scenarios.
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