Exploiting inter-agent coupling information for efficient reinforcement learning of cooperative LQR
Exploiting inter-agent coupling information for efficient reinforcement learning of cooperative LQR
Developing scalable and efficient reinforcement learning algorithms for cooperative multi-agent control has received significant attention over the past years. Existing literature has proposed inexact decompositions of local Q-functions based on empirical information structures between the agents. In this paper, we exploit inter-agent coupling information and propose a systematic approach to exactly decompose the local Q-function of each agent. We develop an approximate least square policy iteration algorithm based on the proposed decomposition and identify two architectures to learn the local Q-function for each agent. We establish that the worst-case sample complexity of the decomposition is equal to the centralized case and derive necessary and sufficient graphical conditions on the inter-agent couplings to achieve better sample efficiency. We demonstrate the improved sample efficiency and computational efficiency on numerical examples.
Shahbaz P Qadri Syed、He Bai
自动化基础理论计算技术、计算机技术
Shahbaz P Qadri Syed,He Bai.Exploiting inter-agent coupling information for efficient reinforcement learning of cooperative LQR[EB/OL].(2025-04-29)[2025-05-29].https://arxiv.org/abs/2504.20927.点此复制
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