Adaptive Reward-Free Exploration

Abstract

Reward-free exploration is a reinforcement learning setting studied by Jin et al. (2020), who address it by running several algorithms with regret guarantees in parallel. In our work, we instead give a more natural adaptive approach for reward-free exploration which directly reduces upper bounds on the maximum MDP estimation error. We show that, interestingly, our reward-free UCRL algorithm can be seen as a variant of an algorithm of Fiechter from 1994, originally proposed for a different objective that we call best-policy identification. We prove that RF-UCRL needs of order (SAH4/2)((1/δ) + S) episodes to output, with probability 1-δ, an -approximation of the optimal policy for any reward function. This bound improves over existing sample-complexity bounds in both the small and the small δ regimes. We further investigate the relative complexities of reward-free exploration and best-policy identification.

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