A Zeroth-Order Proximal Algorithm for Consensus Optimization
Abstract
This paper considers a consensus optimization problem, where all the nodes in a network, with access to the zeroth-order information of its local objective function only, attempt to cooperatively achieve a common minimizer of the sum of their local objectives. To address this problem, we develop ZoPro, a zeroth-order proximal algorithm, which incorporates a zeroth-order oracle for approximating Hessian and gradient into a recently proposed, high-performance distributed second-order proximal algorithm. We show that the proposed ZoPro algorithm, equipped with a dynamic stepsize, converges linearly to a neighborhood of the optimum in expectation, provided that each local objective function is strongly convex and smooth. Extensive simulations demonstrate that ZoPro converges faster than several state-of-the-art distributed zeroth-order algorithms and outperforms a few distributed second-order algorithms in terms of running time for reaching given accuracy.
Cite
@article{arxiv.2406.09816,
title = {A Zeroth-Order Proximal Algorithm for Consensus Optimization},
author = {Chengan Wang and Zichong Ou and Jie Lu},
journal= {arXiv preprint arXiv:2406.09816},
year = {2024}
}
Comments
8 pages, 3 figures