A Primal-Dual Frank-Wolfe Algorithm for Linear Programming
Abstract
We present two first-order primal-dual algorithms for solving saddle point formulations of linear programs, namely FWLP (Frank-Wolfe Linear Programming) and FWLP-P. The former iteratively applies the Frank-Wolfe algorithm to both the primal and dual of the saddle point formulation of a standard-form LP. The latter is a modification of FWLP in which regularizing perturbations are used in computing the iterates. We show that FWLP-P converges to a primal-dual solution with error after iterations, while no convergence guarantees are provided for FWLP. We also discuss the advantages of using FWLP and FWLP-P for solving very large LPs. In particular, we argue that only part of the matrix is needed at each iteration, in contrast to other first-order methods.
Cite
@article{arxiv.2402.18514,
title = {A Primal-Dual Frank-Wolfe Algorithm for Linear Programming},
author = {Matthew Hough and Stephen A. Vavasis},
journal= {arXiv preprint arXiv:2402.18514},
year = {2024}
}