178
v1v2 (latest)

Scalable DC Optimization via Adaptive Frank-Wolfe Algorithms

Main:17 Pages
20 Figures
Bibliography:2 Pages
5 Tables
Appendix:9 Pages
Abstract

We consider the problem of minimizing a difference of (smooth) convex functions over a compact convex feasible region PP, i.e., minxPf(x)g(x)\min_{x \in P} f(x) - g(x), with smooth ff and Lipschitz continuous gg. This computational study builds upon and complements the framework of Maskan et al. [2025] by integrating advanced Frank-Wolfe variants to reduce computational overhead. We empirically show that constrained DC problems can be efficiently solved using a combination of the Blended Pairwise Conditional Gradients (BPCG) algorithm [Tsuji et al., 2022] with warm-starting and the adaptive error bound from Maskan et al. [2025]. The result is a highly efficient and scalable projection-free algorithm for constrained DC optimization.

View on arXiv
Comments on this paper