Part of Advances in Neural Information Processing Systems 35 (NeurIPS 2022) Main Conference Track
Yeoneung Kim, Insoon Yang, Kwang-Sung Jun
In online learning problems, exploiting low variance plays an important role in obtaining tight performance guarantees yet is challenging because variances are often not known a priori. Recently, considerable progress has been made by Zhang et al. (2021) where they obtain a variance-adaptive regret bound for linear bandits without knowledge of the variances and a horizon-free regret bound for linear mixture Markov decision processes (MDPs). In this paper, we present novel analyses that improve their regret bounds significantly. For linear bandits, we achieve ˜O(min where d is the dimension of the features, K is the time horizon, and \sigma_k^2 is the noise variance at time step k, and \tilde O ignores polylogarithmic dependence, which is a factor of d^3 improvement. For linear mixture MDPs with the assumption of maximum cumulative reward in an episode being in [0,1], we achieve a horizon-free regret bound of \tilde O(d \sqrt{K} + d^2) where d is the number of base models and K is the number of episodes. This is a factor of d^{3.5} improvement in the leading term and d^7 in the lower order term. Our analysis critically relies on a novel peeling-based regret analysis that leverages the elliptical potential `count' lemma.