A Block-Coordinate Descent Method for Linearly Constrained Minimization Problem

Authors

  • Xuefang Liu
  • Zheng Peng

Keywords:

linearly constrained optimization, block coordinate descent, Gauss-Seidel fashion.

Abstract

In this paper, a block coordinate descent method is developed to solve a linearly constrained separable convex optimization problem. The proposed method divides the decision variable into a few blocks based on certain rules. Then the candidate solution is iteratively obtained by updating one block at each iteration. The problem, whether or not there are overlapping regions between two immediately adjacent blocks, is investigated. The global convergence of the proposed method is established under some suitable assumptions. Numerical results show that the proposed method is effective compared with some “full-type” methods.

Published

2022-06-17

Issue

Section

Articles