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Breaking the Sample Size Barrier in Model-Based Reinforcement Learning with a Generative Model

Author

Listed:
  • Gen Li

    (Department of Statistics and Data Science, The Wharton School, University of Pennsylvania, Philadelphia, Pennsylvania 19104)

  • Yuting Wei

    (Department of Statistics and Data Science, The Wharton School, University of Pennsylvania, Philadelphia, Pennsylvania 19104)

  • Yuejie Chi

    (Department of Electrical and Computer Engineering, Carnegie Mellon University, Pittsburgh, Pennsylvania 15213)

  • Yuxin Chen

    (Department of Statistics and Data Science, The Wharton School, University of Pennsylvania, Philadelphia, Pennsylvania 19104; Department of Electrical and Systems Engineering, University of Pennsylvania, Philadelphia, Pennsylvania 19104)

Abstract

This paper is concerned with the sample efficiency of reinforcement learning, assuming access to a generative model (or simulator). We first consider γ -discounted infinite-horizon Markov decision processes (MDPs) with state space S and action space A . Despite a number of prior works tackling this problem, a complete picture of the trade-offs between sample complexity and statistical accuracy has yet to be determined. In particular, all prior results suffer from a severe sample size barrier in the sense that their claimed statistical guarantees hold only when the sample size exceeds at least | S ‖ A | ( 1 − γ ) 2 . The current paper overcomes this barrier by certifying the minimax optimality of two algorithms—a perturbed model-based algorithm and a conservative model-based algorithm—as soon as the sample size exceeds the order of | S ‖ A | 1 − γ (modulo some log factor). Moving beyond infinite-horizon MDPs, we further study time-inhomogeneous finite-horizon MDPs and prove that a plain model-based planning algorithm suffices to achieve minimax-optimal sample complexity given any target accuracy level. To the best of our knowledge, this work delivers the first minimax-optimal guarantees that accommodate the entire range of sample sizes (beyond which finding a meaningful policy is information theoretically infeasible).

Suggested Citation

  • Gen Li & Yuting Wei & Yuejie Chi & Yuxin Chen, 2024. "Breaking the Sample Size Barrier in Model-Based Reinforcement Learning with a Generative Model," Operations Research, INFORMS, vol. 72(1), pages 203-221, January.
  • Handle: RePEc:inm:oropre:v:72:y:2024:i:1:p:203-221
    DOI: 10.1287/opre.2023.2451
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