KL-Entropy-Regularized RL with a Generative Model is Minimax Optimal
Abstract
Mirror descent value iteration with Kullback-Leibler divergence and entropy regularization is shown to be nearly minimax-optimal in model-free reinforcement learning without variance reduction.
In this work, we consider and analyze the sample complexity of model-free reinforcement learning with a generative model. Particularly, we analyze mirror descent value iteration (MDVI) by Geist et al. (2019) and Vieillard et al. (2020a), which uses the Kullback-Leibler divergence and entropy regularization in its value and policy updates. Our analysis shows that it is nearly minimax-optimal for finding an varepsilon-optimal policy when varepsilon is sufficiently small. This is the first theoretical result that demonstrates that a simple model-free algorithm without variance-reduction can be nearly minimax-optimal under the considered setting.
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