Christian Kanzow ; Tanja Neder - An adaptive proximal safeguarded augmented Lagrangian method for nonsmooth DC problems with convex constraints

jnsao:15731 - Journal of Nonsmooth Analysis and Optimization, March 31, 2026, Volume 6 - https://doi.org/10.46298/jnsao-2026-15731
An adaptive proximal safeguarded augmented Lagrangian method for nonsmooth DC problems with convex constraintsArticle

Authors: Christian Kanzow ORCID1; Tanja Neder ORCID1

A proximal safeguarded augmented Lagrangian method for minimizing the difference of convex (DC) functions over a nonempty, closed and convex set with additional linear equality as well as convex inequality constraints is presented. Thereby, all functions involved may be nonsmooth. Iterates (of the primal variable) are obtained by solving convex optimization problems as the concave part of the objective function gets approximated by an affine linearization. Under the assumption of a modified Slater constraint qualification, both convergence of the primal and dual variables to a generalized Karush-Kuhn-Tucker (KKT) point is proven, at least on a subsequence. Numerical experiments and comparison with existing solution methods are presented using some classes of constrained and nonsmooth DC problems.

38 pages,4 figures; final version: proof of Lemma 3.3 has been restructured


Volume: Volume 6
Section: Original research articles
Published on: March 31, 2026
Accepted on: March 23, 2026
Submitted on: May 23, 2025
Keywords: Optimization and Control