English

Explicit Second-Order Min-Max Optimization: Practical Algorithms and Complexity Analysis

Optimization and Control 2026-05-27 v7 Computational Complexity Machine Learning

Abstract

We propose and analyze several inexact regularized Newton-type methods for finding a global saddle point of convex-concave unconstrained min-max optimization problems. Compared to first-order methods, our understanding of second-order methods for min-max optimization is relatively limited, as obtaining global rates of convergence with second-order information can be much more involved. In this paper, we examine how second-order information is used to speed up extra-gradient methods, even under inexactness. In particular, we show that the proposed methods generate iterates that remain within a bounded set and that the averaged iterates converge to an ϵ\epsilon-saddle point within O(ϵ2/3)O(\epsilon^{-2/3}) iterations in terms of a restricted gap function. We also provide a simple routine for solving the subproblem at each iteration, requiring a single Schur decomposition and O(loglog(1/ϵ))O(\log\log(1/\epsilon)) calls to a linear system solver in a quasi-upper-triangular system. Thus, our method improves the existing line-search-based second-order min-max optimization methods by shaving off an O(loglog(1/ϵ))O(\log\log(1/\epsilon)) factor in the required number of Schur decompositions. Finally, we evaluate our method on both synthetic benchmarks and a real-world application arising from AUC maximization on standard LIBSVM datasets, and find that the proposed second-order approach delivers stronger practical efficiency than representative first-order methods on these problems.

Keywords

Cite

@article{arxiv.2210.12860,
  title  = {Explicit Second-Order Min-Max Optimization: Practical Algorithms and Complexity Analysis},
  author = {Tianyi Lin and Panayotis Mertikopoulos and Michael I. Jordan},
  journal= {arXiv preprint arXiv:2210.12860},
  year   = {2026}
}

Comments

Accepted by TMLR; 35 pages