Sampling Based Approaches for Minimizing Regret in Uncertain Markov Decision Processes (MDPs)

Author:

Ahmed Asrar,Varakantham Pradeep,Lowalekar Meghna,Adulyasak Yossiri,Jaillet Patrick

Abstract

Markov Decision Processes (MDPs) are an effective model to represent decision processes in the presence of transitional uncertainty and reward tradeoffs. However, due to the difficulty in exactly specifying the transition and reward functions in MDPs, researchers have proposed uncertain MDP models and robustness objectives in solving those models. Most approaches for computing robust policies have focused on the computation of maximin policies which maximize the value in the worst case amongst all realisations of uncertainty. Given the overly conservative nature of maximin policies, recent work has proposed minimax regret as an ideal alternative to the maximin objective for robust optimization. However, existing algorithms for handling minimax regret are restricted to models with uncertainty over rewards only and they are also limited in their scalability. Therefore, we provide a general model of uncertain MDPs that considers uncertainty over both transition and reward functions. Furthermore, we also consider dependence of the uncertainty across different states and decision epochs. We also provide a mixed integer linear program formulation for minimizing regret given a set of samples of the transition and reward functions in the uncertain MDP. In addition, we provide two myopic variants of regret, namely Cumulative Expected Myopic Regret (CEMR) and One Step Regret (OSR) that can be optimized in a scalable manner. Specifically, we provide dynamic programming and policy iteration based algorithms to optimize CEMR and OSR respectively. Finally, to demonstrate the effectiveness of our approaches, we provide comparisons on two benchmark problems from literature. We observe that optimizing the myopic variants of regret, OSR and CEMR are better than directly optimizing the regret.

Publisher

AI Access Foundation

Subject

Artificial Intelligence

Cited by 12 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Double-Factored Decision Theory for Markov Decision Processes with Multiple Scenarios of the Parameters;Journal of the Operations Research Society of China;2023-05-15

2. Formal Methods for Autonomous Systems;Foundations and Trends® in Systems and Control;2023

3. Online Planning of Uncertain MDPs under Temporal Tasks and Safe-Return Constraints;2022 IEEE 61st Conference on Decision and Control (CDC);2022-12-06

4. Scenario-based verification of uncertain parametric MDPs;International Journal on Software Tools for Technology Transfer;2022-09-14

5. Deterministic policies based on maximum regrets in MDPs with imprecise rewards;AI Communications;2021-09-20

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