A conversion theorem and minimax optimality for continuum contextual bandits
Arya Akhavan, Karim Lounici, Massimiliano Pontil, and Alexandre B. Tsybakov

TL;DR
This paper establishes a conversion theorem linking static and contextual regret in continuum bandits, demonstrating minimax optimality for various function classes under different noise conditions.
Contribution
It introduces a static-to-contextual regret conversion theorem and proves minimax optimality of algorithms for Lipschitz, convex, and strongly convex bandits.
Findings
Achieves minimax optimal regret for Lipschitz bandits with =1.
Shows the same regret rate for convex and strongly convex bandits under noise.
Provides a lower bound indicating impossibility of sub-linear regret without continuity.
Abstract
We study the contextual continuum bandits problem, where the learner sequentially receives a side information vector and has to choose an action in a convex set, minimizing a function associated with the context. The goal is to minimize all the underlying functions for the received contexts, leading to the contextual notion of regret, which is stronger than the standard static regret. Assuming that the objective functions are -H\"older with respect to the contexts, we demonstrate that any algorithm achieving a sub-linear static regret can be extended to achieve a sub-linear contextual regret. We prove a static-to-contextual regret conversion theorem that provides an upper bound for the contextual regret of the output algorithm as a function of the static regret of the input algorithm. We further study the implications of this general result for three fundamental…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Decision-Making and Behavioral Economics · Forecasting Techniques and Applications
