English

Decentralized Min-Max Optimization with Gradient Tracking

Optimization and Control 2025-05-19 v1

Abstract

This paper presents a novel distributed formulation of the min-max optimization problem. Such a formulation enables enhanced flexibility among agents when optimizing their maximization variables. To address the problem, we propose two distributed gradient methods over networks, termed Distributed Gradient Tracking Ascent (DGTA) and Distributed Stochastic Gradient Tracking Ascent (DSGTA). We demonstrate that DGTA achieves an iteration complexity of O(κ2ε2)\mathcal{O}(\kappa^2\varepsilon^{-2}), and DSGTA attains a sample complexity of O(κ3ε4)\mathcal{O}(\kappa^3\varepsilon^{-4}) for nonconvex strongly concave (NC-SC) objective functions. Both results match those of their centralized counterparts up to constant factors related to the communication network. Numerical experiments further demonstrate the superior empirical performance of the proposed algorithms compared to existing methods.

Keywords

Cite

@article{arxiv.2505.10631,
  title  = {Decentralized Min-Max Optimization with Gradient Tracking},
  author = {Runze You and Kun Huang and Shi Pu},
  journal= {arXiv preprint arXiv:2505.10631},
  year   = {2025}
}
R2 v1 2026-06-28T23:34:59.180Z