This paper studies regret minimization with randomized value functions in reinforcement learning. In tabular finite-horizon Markov Decision Processes, we introduce a clipping variant of one classical Thompson Sampling (TS)-like algorithm, randomized least-squares value iteration (RLSVI). Our O~(H2SAT) high-probability worst-case regret bound improves the previous sharpest worst-case regret bounds for RLSVI and matches the existing state-of-the-art worst-case TS-based regret bounds.
@article{arxiv.2010.12163,
title = {Improved Worst-Case Regret Bounds for Randomized Least-Squares Value Iteration},
author = {Priyank Agrawal and Jinglin Chen and Nan Jiang},
journal= {arXiv preprint arXiv:2010.12163},
year = {2021}
}