Privacy Preserving Reinforcement Learning with One-Sided Feedback
摘要
We study reinforcement learning (RL) in multi-dimensional continuous state and action spaces with one-sided feedback, where the agent receives partial observations of the state and obtains reward information for only a subset of the state-action space at each time step. This setting introduces substantial challenges in both learning efficiency and privacy preservation. To address these challenges, we propose POOL, a novel privacy-preserving RL algorithm. We conduct a comprehensive theoretical analysis of POOL, deriving a sample complexity bound that matches the known lower bounds for non-private RL. Here, E_rho denotes the privacy parameter, H is the time horizon, and alpha is the optimality-gap parameter. Our findings show that it is possible to enforce strong privacy guarantees while maintaining high learning efficiency, marking a significant step toward practical, privacy-aware RL in multi-dimensional environments with one-sided feedback.
引用
@article{arxiv.2605.18246,
title = {Privacy Preserving Reinforcement Learning with One-Sided Feedback},
author = {Lin William Cong and Guangyan Gan and Hanzhang Qin and Zhenzhen Yan},
journal= {arXiv preprint arXiv:2605.18246},
year = {2026}
}
备注
Accepted at IJCAI-ECAI 2026