Subspace-based Approximate Hessian Method for Zeroth-Order Optimization
Abstract
Zeroth-order optimization addresses problems where gradient information is inaccessible or impractical to compute. While most existing methods rely on first-order approximations, incorporating second-order (curvature) information can, in principle, significantly accelerate convergence. However, the high cost of function evaluations required to estimate Hessian matrices often limits practical applicability. We present the subspace-based approximate Hessian (ZO-SAH) method, a zeroth-order optimization algorithm that mitigates these costs by focusing on randomly selected two-dimensional subspaces. Within each subspace, ZO-SAH estimates the Hessian by fitting a quadratic polynomial to the objective function and extracting its second-order coefficients. To further reduce function-query costs, ZO-SAH employs a periodic subspace-switching strategy that reuses function evaluations across optimization steps. Experiments on eight benchmark datasets, including logistic regression and deep neural network training tasks, demonstrate that ZO-SAH achieves significantly faster convergence than existing zeroth-order methods.
Cite
@article{arxiv.2507.06125,
title = {Subspace-based Approximate Hessian Method for Zeroth-Order Optimization},
author = {Dongyoon Kim and Sungjae Lee and Wonjin Lee and Kwang In Kim},
journal= {arXiv preprint arXiv:2507.06125},
year = {2025}
}
Comments
20 pages, 8 figures