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Relaxed Equilibria for Time-Inconsistent Markov Decision Processes

Authors :
Bayraktar, Erhan
Huang, Yu-Jui
Wang, Zhenhua
Zhou, Zhou
Publication Year :
2023

Abstract

This paper considers an infinite-horizon Markov decision process (MDP) that allows for general non-exponential discount functions, in both discrete and continuous time. Due to the inherent time inconsistency, we look for a randomized equilibrium policy (i.e., relaxed equilibrium) in an intra-personal game between an agent's current and future selves. When we modify the MDP by entropy regularization, a relaxed equilibrium is shown to exist by a nontrivial entropy estimate. As the degree of regularization diminishes, the entropy-regularized MDPs approximate the original MDP, which gives the general existence of a relaxed equilibrium in the limit by weak convergence arguments. As opposed to prior studies that consider only deterministic policies, our existence of an equilibrium does not require any convexity (or concavity) of the controlled transition probabilities and reward function. Interestingly, this benefit of considering randomized policies is unique to the time-inconsistent case.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2307.04227
Document Type :
Working Paper