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arxiv:2006.05879

Planning in Markov Decision Processes with Gap-Dependent Sample Complexity

Published on Jun 10, 2020
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Abstract

MDP-GapE, a trajectory-based Monte-Carlo Tree Search algorithm, efficiently identifies near-optimal actions in Markov Decision Processes with finite support transitions.

AI-generated summary

We propose MDP-GapE, a new trajectory-based Monte-Carlo Tree Search algorithm for planning in a Markov Decision Process in which transitions have a finite support. We prove an upper bound on the number of calls to the generative models needed for MDP-GapE to identify a near-optimal action with high probability. This problem-dependent sample complexity result is expressed in terms of the sub-optimality gaps of the state-action pairs that are visited during exploration. Our experiments reveal that MDP-GapE is also effective in practice, in contrast with other algorithms with sample complexity guarantees in the fixed-confidence setting, that are mostly theoretical.

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