English

On Practical Robust Reinforcement Learning: Practical Uncertainty Set and Double-Agent Algorithm

Machine Learning 2023-11-21 v3 Artificial Intelligence

Abstract

Robust reinforcement learning (RRL) aims at seeking a robust policy to optimize the worst case performance over an uncertainty set of Markov decision processes (MDPs). This set contains some perturbed MDPs from a nominal MDP (N-MDP) that generate samples for training, which reflects some potential mismatches between training (i.e., N-MDP) and true environments. In this paper we present an elaborated uncertainty set by excluding some implausible MDPs from the existing sets. Under this uncertainty set, we develop a sample-based RRL algorithm (named ARQ-Learning) for tabular setting and characterize its finite-time error bound. Also, it is proved that ARQ-Learning converges as fast as the standard Q-Learning and robust Q-Learning while ensuring better robustness. We introduce an additional pessimistic agent which can tackle the major bottleneck for the extension of ARQ-Learning into the cases with larger or continuous state spaces. Incorporating this idea into RL algorithms, we propose double-agent algorithms for model-free RRL. Via experiments, we demonstrate the effectiveness of the proposed algorithms.

Keywords

Cite

@article{arxiv.2305.06657,
  title  = {On Practical Robust Reinforcement Learning: Practical Uncertainty Set and Double-Agent Algorithm},
  author = {Ukjo Hwang and Songnam Hong},
  journal= {arXiv preprint arXiv:2305.06657},
  year   = {2023}
}
R2 v1 2026-06-28T10:31:49.433Z