NeurIPS2022

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

Tongyang Li, Ruizhe Zhang

被引用 17 次

摘要

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.