NeurIPS2024

Quantum Algorithms for Non-smooth Non-convex Optimization

Chengchang Liu, Chaowen Guan, Jianhao He, John C. S. Lui

Abstract

This paper considers the problem for finding the (δ,ϵ)(\delta,\epsilon)-Goldstein stationary point of Lipschitz continuous objective, which is a rich function class to cover a great number of important applications. We construct a zeroth-order quantum estimator for the gradient of the smoothed surrogate. Based on such estimator, we propose a novel quantum algorithm that achieves a query complexity of O~(d3/2δ1ϵ3)\tilde{\mathcal{O}}(d^{3/2}\delta^{-1}\epsilon^{-3}) on the stochastic function value oracle, where dd is the dimension of the problem. We also enhance the query complexity to O~(d3/2δ1ϵ7/3)\tilde{\mathcal{O}}(d^{3/2}\delta^{-1}\epsilon^{-7/3}) by introducing a variance reduction variant. Our findings demonstrate the clear advantages of utilizing quantum techniques for non-convex non-smooth optimization, as they outperform the optimal classical methods on the dependency of ϵ\epsilon by a factor of ϵ2/3\epsilon^{-2/3}.