Optimistic Bilevel Optimization with Composite Lower-Level Problem
Abstract
This paper introduces a novel double regularization scheme for bilevel optimization problems whose lower-level problem is composite and convex, but not necessarily strongly convex, in the lower-level variable. The analysis focuses on the primal-dual solution mapping of the regularized lower-level problem and exploits its properties to derive an almost-everywhere formula for the gradient of the regularized hyper-objective under mild assumptions. The paper then establishes conditions under which the hyper-objective of the actual problem is well defined and shows that its gradient can be approximated by the gradient of the regularized hyper-objective. Building on these results, a gradient sampling-based algorithm computes approximately stationary points of the regularized hyper-objective, and we prove its convergence to stationary points of the actual problem. Two numerical examples from machine learning demonstrate the proposed approach.
Cite
@article{arxiv.2602.05417,
title = {Optimistic Bilevel Optimization with Composite Lower-Level Problem},
author = {Mattia Solla and Johannes O. Royset},
journal= {arXiv preprint arXiv:2602.05417},
year = {2026}
}
Comments
37 pages. Submitted to Mathematics of Operations Research