Locally Centralized Execution for Less Redundant Computation in Multi-Agent Cooperation
Yidong Bai,
Toshiharu Sugawara
Abstract:Decentralized execution is a widely used framework in multi-agent reinforcement learning. However, it has a well-known but neglected shortcoming, redundant computation, that is, the same/similar computation is performed redundantly in different agents owing to their overlapping observations. This study proposes a novel method, the locally centralized team transformer (LCTT), to address this problem. This method first proposes a locally centralized execution framework that autonomously determines some agents as… Show more
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