Saved in:
Bibliographic Details
Main Authors: Kozak, David, Becker, Stephen, Doostan, Alireza, Tenorio, Luis
Format: Preprint
Published: 2020
Subjects:
Online Access:https://arxiv.org/abs/2003.02684
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866911944396505088
author Kozak, David
Becker, Stephen
Doostan, Alireza
Tenorio, Luis
author_facet Kozak, David
Becker, Stephen
Doostan, Alireza
Tenorio, Luis
contents We present a stochastic descent algorithm for unconstrained optimization that is particularly efficient when the objective function is slow to evaluate and gradients are not easily obtained, as in some PDE-constrained optimization and machine learning problems. The algorithm maps the gradient onto a low-dimensional random subspace of dimension $\ell$ at each iteration, similar to coordinate descent but without restricting directional derivatives to be along the axes. Without requiring a full gradient, this mapping can be performed by computing $\ell$ directional derivatives (e.g., via forward-mode automatic differentiation). We give proofs for convergence in expectation under various convexity assumptions as well as probabilistic convergence results under strong-convexity. Our method extends the well-known Gaussian smoothing technique to descent in subspaces of dimension greater than one, opening the doors to new analysis of Gaussian smoothing when more than one directional derivative is used at each iteration. We also provide a finite-dimensional variant of a special case of the Johnson-Lindenstrauss lemma. Experimentally, we show that our method compares favorably to coordinate descent, Gaussian smoothing, gradient descent and BFGS (when gradients are calculated via forward-mode automatic differentiation) on problems from the machine learning and shape optimization literature.
format Preprint
id arxiv_https___arxiv_org_abs_2003_02684
institution arXiv
publishDate 2020
record_format arxiv
spellingShingle A stochastic subspace approach to gradient-free optimization in high dimensions
Kozak, David
Becker, Stephen
Doostan, Alireza
Tenorio, Luis
Optimization and Control
90C06, 93B40, 65K10
We present a stochastic descent algorithm for unconstrained optimization that is particularly efficient when the objective function is slow to evaluate and gradients are not easily obtained, as in some PDE-constrained optimization and machine learning problems. The algorithm maps the gradient onto a low-dimensional random subspace of dimension $\ell$ at each iteration, similar to coordinate descent but without restricting directional derivatives to be along the axes. Without requiring a full gradient, this mapping can be performed by computing $\ell$ directional derivatives (e.g., via forward-mode automatic differentiation). We give proofs for convergence in expectation under various convexity assumptions as well as probabilistic convergence results under strong-convexity. Our method extends the well-known Gaussian smoothing technique to descent in subspaces of dimension greater than one, opening the doors to new analysis of Gaussian smoothing when more than one directional derivative is used at each iteration. We also provide a finite-dimensional variant of a special case of the Johnson-Lindenstrauss lemma. Experimentally, we show that our method compares favorably to coordinate descent, Gaussian smoothing, gradient descent and BFGS (when gradients are calculated via forward-mode automatic differentiation) on problems from the machine learning and shape optimization literature.
title A stochastic subspace approach to gradient-free optimization in high dimensions
topic Optimization and Control
90C06, 93B40, 65K10
url https://arxiv.org/abs/2003.02684