Differentially Private Regret Minimization in Episodic Markov Decision Processes

From MaRDI portal
Publication:6386196

arXiv2112.10599MaRDI QIDQ6386196

Sayak Ray Chowdhury, Xing-Yu Zhou

Publication date: 20 December 2021

Abstract: We study regret minimization in finite horizon tabular Markov decision processes (MDPs) under the constraints of differential privacy (DP). This is motivated by the widespread applications of reinforcement learning (RL) in real-world sequential decision making problems, where protecting users' sensitive and private information is becoming paramount. We consider two variants of DP -- joint DP (JDP), where a centralized agent is responsible for protecting users' sensitive data and local DP (LDP), where information needs to be protected directly on the user side. We first propose two general frameworks -- one for policy optimization and another for value iteration -- for designing private, optimistic RL algorithms. We then instantiate these frameworks with suitable privacy mechanisms to satisfy JDP and LDP requirements, and simultaneously obtain sublinear regret guarantees. The regret bounds show that under JDP, the cost of privacy is only a lower order additive term, while for a stronger privacy protection under LDP, the cost suffered is multiplicative. Finally, the regret bounds are obtained by a unified analysis, which, we believe, can be extended beyond tabular MDPs.




Has companion code repository: https://github.com/xingyuzhou989/privatetabularrl








This page was built for publication: Differentially Private Regret Minimization in Episodic Markov Decision Processes

Report a bug (only for logged in users!)Click here to report a bug for this page (MaRDI item Q6386196)