Back to Search Start Over

A Fully Problem-Dependent Regret Lower Bound for Finite-Horizon MDPs

Authors :
Tirinzoni, Andrea
Pirotta, Matteo
Lazaric, Alessandro
Publication Year :
2021
Publisher :
arXiv, 2021.

Abstract

We derive a novel asymptotic problem-dependent lower-bound for regret minimization in finite-horizon tabular Markov Decision Processes (MDPs). While, similar to prior work (e.g., for ergodic MDPs), the lower-bound is the solution to an optimization problem, our derivation reveals the need for an additional constraint on the visitation distribution over state-action pairs that explicitly accounts for the dynamics of the MDP. We provide a characterization of our lower-bound through a series of examples illustrating how different MDPs may have significantly different complexity. 1) We first consider a "difficult" MDP instance, where the novel constraint based on the dynamics leads to a larger lower-bound (i.e., a larger regret) compared to the classical analysis. 2) We then show that our lower-bound recovers results previously derived for specific MDP instances. 3) Finally, we show that, in certain "simple" MDPs, the lower bound is considerably smaller than in the general case and it does not scale with the minimum action gap at all. We show that this last result is attainable (up to $poly(H)$ terms, where $H$ is the horizon) by providing a regret upper-bound based on policy gaps for an optimistic algorithm.

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....177315f000cb991784495efe41631736
Full Text :
https://doi.org/10.48550/arxiv.2106.13013