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Oracle-Efficient Combinatorial Semi-Bandits

Main:10 Pages
4 Figures
Bibliography:1 Pages
1 Tables
Appendix:25 Pages
Abstract

We study the combinatorial semi-bandit problem where an agent selects a subset of base arms and receives individual feedback. While this generalizes the classical multi-armed bandit and has broad applicability, its scalability is limited by the high cost of combinatorial optimization, requiring oracle queries at every round. To tackle this, we propose oracle-efficient frameworks that significantly reduce oracle calls while maintaining tight regret guarantees. For the worst-case linear reward setting, our algorithms achieve O~(T)\tilde{O}(\sqrt{T}) regret using only O(loglogT)O(\log\log T) oracle queries. We also propose covariance-adaptive algorithms that leverage noise structure for improved regret, and extend our approach to general (non-linear) rewards. Overall, our methods reduce oracle usage from linear to (doubly) logarithmic in time, with strong theoretical guarantees.

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