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Sum-max Submodular Bandits

10 November 2023
Stephen Pasteris
Alberto Rumi
Fabio Vitale
Nicolò Cesa-Bianchi
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Abstract

Many online decision-making problems correspond to maximizing a sequence of submodular functions. In this work, we introduce sum-max functions, a subclass of monotone submodular functions capturing several interesting problems, including best-of-KKK-bandits, combinatorial bandits, and the bandit versions on facility location, MMM-medians, and hitting sets. We show that all functions in this class satisfy a key property that we call pseudo-concavity. This allows us to prove (1−1e)\big(1 - \frac{1}{e}\big)(1−e1​)-regret bounds for bandit feedback in the nonstochastic setting of the order of MKT\sqrt{MKT}MKT​ (ignoring log factors), where TTT is the time horizon and MMM is a cardinality constraint. This bound, attained by a simple and efficient algorithm, significantly improves on the O~(T2/3)\widetilde{O}\big(T^{2/3}\big)O(T2/3) regret bound for online monotone submodular maximization with bandit feedback.

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