NeurIPS2022

Quantum Speedups of Optimizing Approximately Convex Functions with Applications to Logarithmic Regret Stochastic Convex Bandits

Tongyang Li, Ruizhe Zhang

17 citations

Abstract

We initiate the study of quantum algorithms for optimizing approximately convex functions. Given a convex set KRn{\cal K}\subseteq\mathbb{R}^{n} and a function F ⁣:RnRF\colon\mathbb{R}^{n}\to\mathbb{R} such that there exists a convex function f ⁣:KRf\colon\mathcal{K}\to\mathbb{R} satisfying supxKF(x)f(x)ϵ/n\sup_{x\in{\cal K}}|F(x)-f(x)|\leq \epsilon/n, our quantum algorithm finds an xKx^{*}\in{\cal K} such that F(x)minxKF(x)ϵF(x^{*})-\min_{x\in{\cal K}} F(x)\leq\epsilon using O~(n3)\tilde{O}(n^{3}) quantum evaluation queries to FF. 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 O~(n5log2T)\tilde{O}(n^{5}\log^{2} T) regret, an exponential speedup in TT compared to the classical Ω(T)\Omega(\sqrt{T}) lower bound. Technically, we achieve quantum speedup in nn by exploiting a quantum framework of simulated annealing and adopting a quantum version of the hit-and-run walk. Our speedup in TT for zeroth-order stochastic convex bandits is due to a quadratic quantum speedup in multiplicative error of mean estimation.