Structure-Aware Methods for Expensive Derivative-Free Nonsmooth Composite Optimization
Abstract
We present new methods for solving a broad class of bound-constrained nonsmooth composite minimization problems. These methods are specially designed for objectives that are some known mapping of outputs from a computationally expensive function. We provide accompanying implementations of these methods: in particular, a novel manifold sampling algorithm (\mspshortref) with subproblems that are in a sense primal versions of the dual problems solved by previous manifold sampling methods and a method (\goombahref) that employs more difficult optimization subproblems. For these two methods, we provide rigorous convergence analysis and guarantees. We demonstrate extensive testing of these methods. Open-source implementations of the methods developed in this manuscript can be found at \url{github.com/POptUS/IBCDFO/}.
Cite
@article{arxiv.2207.08264,
title = {Structure-Aware Methods for Expensive Derivative-Free Nonsmooth Composite Optimization},
author = {Jeffrey Larson and Matt Menickelly},
journal= {arXiv preprint arXiv:2207.08264},
year = {2023}
}