Primal-dual Accelerated Mirror-Descent Method for Constrained Bilinear Saddle-Point Problems
Optimization and Control
2024-10-04 v2
Abstract
We develop a first-order accelerated algorithm for a class of constrained bilinear saddle-point problems with applications to network systems. The algorithm is a modified time-varying primal-dual version of an accelerated mirror-descent dynamics. It deals with constraints such as simplices and convex set constraints effectively, and converges with a rate of . Furthermore, we employ the acceleration scheme to constrained distributed optimization and bilinear zero-sum games, and obtain two variants of distributed accelerated algorithms.
Cite
@article{arxiv.2409.18285,
title = {Primal-dual Accelerated Mirror-Descent Method for Constrained Bilinear Saddle-Point Problems},
author = {Weijian Li and Xianlin Zeng and Lacra Pavel},
journal= {arXiv preprint arXiv:2409.18285},
year = {2024}
}