A finite time analysis of distributed Q-learning
Abstract
Multi-agent reinforcement learning (MARL) has witnessed a remarkable surge in interest, fueled by the empirical success achieved in applications of single-agent reinforcement learning (RL). In this study, we consider a distributed Q-learning scenario, wherein a number of agents cooperatively solve a sequential decision making problem without access to the central reward function which is an average of the local rewards. In particular, we study finite-time analysis of a distributed Q-learning algorithm, and provide a new sample complexity result of O( \1ε2tmix(1-γ)6 d4 ,1ε||||(1-σ2(W))(1-γ)4 d3 \) under tabular lookup
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