NeurIPS2022

Sharp Analysis of Stochastic Optimization under Global Kurdyka-Lojasiewicz Inequality

Ilyas Fatkhullin, Jalal Etesami, Niao He, Negar Kiyavash

被引用 28 次

摘要

We study the complexity of finding the global solution to stochastic nonconvex optimization when the objective function satisfies global Kurdyka-Lojasiewicz (KL) inequality and the queries from stochastic gradient oracles satisfy mild expected smoothness assumption. We first introduce a general framework to analyze Stochastic Gradient Descent (SGD) and its associated nonlinear dynamics under the setting. As a byproduct of our analysis, we obtain a sample complexity of O(ϵ(4α)/α)\mathcal{O}(\epsilon^{-(4-\alpha)/\alpha}) for SGD when the objective satisfies the so called α\alpha-PL condition, where α\alpha is the degree of gradient domination. Furthermore, we show that a modified SGD with variance reduction and restarting (PAGER) achieves an improved sample complexity of O(ϵ2/α)\mathcal{O}(\epsilon^{-2/\alpha}) when the objective satisfies the average smoothness assumption. This leads to the first optimal algorithm for the important case of α=1\alpha=1 which appears in applications such as policy optimization in reinforcement learning.