Regret Tail Characterization of Optimal Bandit Algorithms with Generic Rewards

April 16, 2026 ยท Grace Period ยท ๐Ÿ› 2026 IEEE International Symposium on Information Theory (ISIT 2026)

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Authors Subhodip Panda, Shubhada Agrawal arXiv ID 2604.14876 Category cs.IT: Information Theory Cross-listed cs.LG Citations 0 Venue 2026 IEEE International Symposium on Information Theory (ISIT 2026)
Abstract
We study the tail behavior of regret in stochastic multi-armed bandits for algorithms that are asymptotically optimal in expectation. While minimizing expected regret is the classical objective, recent work shows that even such algorithms can exhibit heavy regret tails, incurring large regret with non-negligible probability. Existing sharp characterizations of regret tails are largely restricted to parametric settings, such as single-parameter exponential families. In this work, we extend the $\KLinf$-UCB algorithm of to a broad nonparametric class of reward distributions satisfying mild assumptions, and establish its asymptotic optimality in expectation. We then analyze the tail behavior of its regret and derive a novel upper bound on the regret tail probability. As special cases, our results recover regret-tail guarantees for both bounded-support and heavy-tailed (moment-bounded) bandit models. Moreover, for the special case of finitely-supported reward distributions, our upper bound matches the known lower bound exactly. Our results thus provide a unified and tight characterization of regret tails for asymptotically optimal KL-based UCB algorithms, going beyond parametric models.
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