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Statistical Learning of Distributionally Robust Stochastic Control in Continuous State Spaces

  • Shengbo Wang
  • , Nian Si
  • , Jose Blanchet
  • , Zhengyuan Zhou

Research output: Contribution to journalConference article published in journalpeer-review

Abstract

We explore the control of stochastic systems with potentially continuous state and action spaces, characterized by the state dynamics Xt+1 = f(Xt, At, Wt). Here, X, A, and W represent the state, action, and exogenous random noise processes, respectively, with f denoting a known function that describes state transitions. Traditionally, the noise process {Wt, t ≥ 0} is assumed to be independent and identically distributed, with a distribution that is either fully known or can be consistently estimated. However, the occurrence of distributional shifts, typical in engineering settings, necessitates the consideration of the robustness of the policy. This paper introduces a distributionally robust stochastic control paradigm that accommodates possibly adaptive adversarial perturbation to the noise distribution within a prescribed ambiguity set. We examine two adversary models: current-action-aware and current-action-unaware, leading to different dynamic programming equations. Furthermore, we characterize the optimal finite sample minimax rates for achieving uniform learning of the robust value function across continuum states under both adversary types, considering ambiguity sets defined by fk-divergence and Wasserstein distance. Finally, we demonstrate the applicability of our framework across various real-world settings.

Original languageEnglish
Pages (from-to)2791-2799
Number of pages9
JournalProceedings of Machine Learning Research
Volume258
Publication statusPublished - 2025
Event28th International Conference on Artificial Intelligence and Statistics, AISTATS 2025 - Mai Khao, Thailand
Duration: 3 May 20255 May 2025

Bibliographical note

Publisher Copyright:
Copyright 2025 by the author(s).

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