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Third-order Smoothness Helps: Even Faster Stochastic Optimization Algorithms for Finding Local Minima

Yaodong Yu
Pan Xu
Quanquan Gu
Abstract

We propose stochastic optimization algorithms that can find local minima faster than existing algorithms for nonconvex optimization problems, by exploiting the third-order smoothness to escape non-degenerate saddle points more efficiently. More specifically, the proposed algorithm only needs O~(ϵ10/3)\tilde{O}(\epsilon^{-10/3}) stochastic gradient evaluations to converge to an approximate local minimum x\mathbf{x}, which satisfies f(x)2ϵ\|\nabla f(\mathbf{x})\|_2\leq\epsilon and λmin(2f(x))ϵ\lambda_{\min}(\nabla^2 f(\mathbf{x}))\geq -\sqrt{\epsilon} in the general stochastic optimization setting, where O~()\tilde{O}(\cdot) hides logarithm polynomial terms and constants. This improves upon the O~(ϵ7/2)\tilde{O}(\epsilon^{-7/2}) gradient complexity achieved by the state-of-the-art stochastic local minima finding algorithms by a factor of O~(ϵ1/6)\tilde{O}(\epsilon^{-1/6}). For nonconvex finite-sum optimization, our algorithm also outperforms the best known algorithms in a certain regime.

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