English

Horizon-Free and Instance-Dependent Regret Bounds for Reinforcement Learning with General Function Approximation

Machine Learning 2023-12-08 v1 Machine Learning

Abstract

To tackle long planning horizon problems in reinforcement learning with general function approximation, we propose the first algorithm, termed as UCRL-WVTR, that achieves both \emph{horizon-free} and \emph{instance-dependent}, since it eliminates the polynomial dependency on the planning horizon. The derived regret bound is deemed \emph{sharp}, as it matches the minimax lower bound when specialized to linear mixture MDPs up to logarithmic factors. Furthermore, UCRL-WVTR is \emph{computationally efficient} with access to a regression oracle. The achievement of such a horizon-free, instance-dependent, and sharp regret bound hinges upon (i) novel algorithm designs: weighted value-targeted regression and a high-order moment estimator in the context of general function approximation; and (ii) fine-grained analyses: a novel concentration bound of weighted non-linear least squares and a refined analysis which leads to the tight instance-dependent bound. We also conduct comprehensive experiments to corroborate our theoretical findings.

Keywords

Cite

@article{arxiv.2312.04464,
  title  = {Horizon-Free and Instance-Dependent Regret Bounds for Reinforcement Learning with General Function Approximation},
  author = {Jiayi Huang and Han Zhong and Liwei Wang and Lin F. Yang},
  journal= {arXiv preprint arXiv:2312.04464},
  year   = {2023}
}
R2 v1 2026-06-28T13:44:12.831Z