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Reinforcement Learning in Linear MDPs: Constant Regret and Representation Selection

Authors :
Papini, Matteo
Tirinzoni, Andrea
Pacchiano, Aldo
Restelli, Marcello
Lazaric, Alessandro
Pirotta, Matteo
Publication Year :
2021

Abstract

We study the role of the representation of state-action value functions in regret minimization in finite-horizon Markov Decision Processes (MDPs) with linear structure. We first derive a necessary condition on the representation, called universally spanning optimal features (UNISOFT), to achieve constant regret in any MDP with linear reward function. This result encompasses the well-known settings of low-rank MDPs and, more generally, zero inherent Bellman error (also known as the Bellman closure assumption). We then demonstrate that this condition is also sufficient for these classes of problems by deriving a constant regret bound for two optimistic algorithms (LSVI-UCB and ELEANOR). Finally, we propose an algorithm for representation selection and we prove that it achieves constant regret when one of the given representations, or a suitable combination of them, satisfies the UNISOFT condition.<br />Comment: Accepted at NeurIPS 2021

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2110.14798
Document Type :
Working Paper