We initiate the study of quantum algorithms for optimizing approximately convex functions. Given a convex set and a function such that there exists a convex function satisfying , our quantum algorithm finds an such that using quantum evaluation queries to . This achieves a polynomial quantum speedup compared to the best-known classical algorithms. As an application, we give a quantum algorithm for zeroth-order stochastic convex bandits with regret, an exponential speedup in compared to the classical lower bound. Technically, we achieve quantum speedup in by exploiting a quantum framework of simulated annealing and adopting a quantum version of the hit-and-run walk. Our speedup in for zeroth-order stochastic convex bandits is due to a quadratic quantum speedup in multiplicative error of mean estimation.
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