English

Solving bilevel optimization via sequential minimax optimization

Optimization and Control 2025-11-11 v1 Machine Learning Numerical Analysis Numerical Analysis Machine Learning

Abstract

In this paper we propose a sequential minimax optimization (SMO) method for solving a class of constrained bilevel optimization problems in which the lower-level part is a possibly nonsmooth convex optimization problem, while the upper-level part is a possibly nonconvex optimization problem. Specifically, SMO applies a first-order method to solve a sequence of minimax subproblems, which are obtained by employing a hybrid of modified augmented Lagrangian and penalty schemes on the bilevel optimization problems. Under suitable assumptions, we establish an operation complexity of O(ε7logε1)O(\varepsilon^{-7}\log\varepsilon^{-1}) and O(ε6logε1)O(\varepsilon^{-6}\log\varepsilon^{-1}), measured in terms of fundamental operations, for SMO in finding an ε\varepsilon-KKT solution of the bilevel optimization problems with merely convex and strongly convex lower-level objective functions, respectively. The latter result improves the previous best-known operation complexity by a factor of ε1\varepsilon^{-1}. Preliminary numerical results demonstrate significantly superior computational performance compared to the recently developed first-order penalty method.

Keywords

Cite

@article{arxiv.2511.07398,
  title  = {Solving bilevel optimization via sequential minimax optimization},
  author = {Zhaosong Lu and Sanyou Mei},
  journal= {arXiv preprint arXiv:2511.07398},
  year   = {2025}
}

Comments

Accepted by Mathematics of Operations Research