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Adaptive Best-of-Both-Worlds Algorithm for Heavy-Tailed Multi-Armed Bandits

In this paper, we generalize the concept of heavy-tailed multi-armed bandits to adversarial environments, and develop robust best-of-both-worlds algorithms for heavy-tailed multi-armed bandits (MAB), where losses have $α$-th ($1<α\le 2$) moments bounded by $σ^α$, while the variances may not exist. Specifically, we design an algorithm \texttt{HTINF}, when the heavy-tail parameters $α$ and $σ$ are known to the agent, \texttt{HTINF} simultaneously achieves the optimal regret for both stochastic and adversarial environments, without knowing the actual environment type a-priori. When $α,σ$ are unknown, \texttt{HTINF} achieves a $\log T$-style instance-dependent regret in stochastic cases and $o(T)$ no-regret guarantee in adversarial cases. We further develop an algorithm \texttt{AdaTINF}, achieving $\mathcal O(σK^{1-\nicefrac 1α}T^{\nicefrac{1}α})$ minimax optimal regret even in adversarial settings, without prior knowledge on $α$ and $σ$. This result matches the known regret lower-bound (Bubeck et al., 2013), which assumed a stochastic environment and $α$ and $σ$ are both known. To our knowledge, the proposed \texttt{HTINF} algorithm is the first to enjoy a best-of-both-worlds regret guarantee, and \texttt{AdaTINF} is the first algorithm that can adapt to both $α$ and $σ$ to achieve optimal gap-indepedent regret bound in classical heavy-tailed stochastic MAB setting and our novel adversarial formulation.

preprint2022arXivOpen access
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