ZO-AdaMM: Zeroth-Order Adaptive Momentum Method for Black-Box Optimization
Abstract
The adaptive momentum method (AdaMM), which uses past gradients to update descent directions and learning rates simultaneously, has become one of the most popular first-order optimization methods for solving machine learning problems. However, AdaMM is not suited for solving black-box optimization problems, where explicit gradient forms are difficult or infeasible to obtain. In this paper, we propose a zeroth-order AdaMM (ZO-AdaMM) algorithm, that generalizes AdaMM to the gradient-free regime. We show that the convergence rate of ZO-AdaMM for both convex and nonconvex optimization is roughly a factor of $O(\sqrt{d})$ worse than that of the first-order AdaMM algorithm, where $d$ is problem size. In particular, we provide a deep understanding on why Mahalanobis distance matters in convergence of ZO-AdaMM and other AdaMM-type methods. As a byproduct, our analysis makes the first step toward understanding adaptive learning rate methods for nonconvex constrained optimization.Furthermore, we demonstrate two applications, designing per-image and universal adversarial attacks from black-box neural networks, respectively. We perform extensive experiments on ImageNet and empirically show that ZO-AdaMM converges much faster to a solution of high accuracy compared with $6$ state-of-the-art ZO optimization methods.
Cite
Text
Chen et al. "ZO-AdaMM: Zeroth-Order Adaptive Momentum Method for Black-Box Optimization." Neural Information Processing Systems, 2019.Markdown
[Chen et al. "ZO-AdaMM: Zeroth-Order Adaptive Momentum Method for Black-Box Optimization." Neural Information Processing Systems, 2019.](https://mlanthology.org/neurips/2019/chen2019neurips-zoadamm/)BibTeX
@inproceedings{chen2019neurips-zoadamm,
title = {{ZO-AdaMM: Zeroth-Order Adaptive Momentum Method for Black-Box Optimization}},
author = {Chen, Xiangyi and Liu, Sijia and Xu, Kaidi and Li, Xingguo and Lin, Xue and Hong, Mingyi and Cox, David},
booktitle = {Neural Information Processing Systems},
year = {2019},
pages = {7204-7215},
url = {https://mlanthology.org/neurips/2019/chen2019neurips-zoadamm/}
}