A Unified Algorithmic Framework of Symmetric Gauss-Seidel Decomposition Based Proximal ADMMs for Convex Composite Programming

Authors

  • Liang Chen College of Mathematics and Econometrics, Hunan University, Changsha 410082, China
  • Defeng Sun Department of Applied Mathematics, The Hong Kong Polytechnic University, Hong Kong, China
  • Kim-Chuan Toh Department of Mathematics, and Institute of Operations Research and Analytics, National University of Singapore, 10 Lower Kent Ridge Road, Singapore
  • Ning Zhang School of Computer Science and Technology, Dongguan University of Technology, Dongguan, China

DOI:

https://doi.org/10.4208/jcm.1803-m2018-0278

Keywords:

Convex optimization, Multi-block, Alternating direction method of multipliers, Symmetric Gauss-Seidel decomposition, Majorization.

Abstract

This paper aims to present a fairly accessible generalization of several symmetric Gauss-Seidel decomposition based multi-block proximal alternating direction methods of multipliers (ADMMs) for convex composite optimization problems. The proposed method unifies and refines many constructive techniques that were separately developed for the computational efficiency of multi-block ADMM-type algorithms. Specifically, the majorized augmented Lagrangian functions, the indefinite proximal terms, the inexact symmetric Gauss-Seidel decomposition theorem, the tolerance criteria of approximately solving the subproblems, and the large dual step-lengths, are all incorporated in one algorithmic framework, which we named as sGS-imiPADMM. From the popularity of convergent variants of multi-block ADMMs in recent years, especially for high-dimensional multi-block convex composite conic programming problems, the unification presented in this paper, as well as the corresponding convergence results, may have the great potential of facilitating the implementation of many multi-block ADMMs in various problem settings.

Published

2021-07-01

Issue

Section

Articles