A Partially Greedy Randomized Extended Gauss-Seidel Method for Solving Large Linear Systems

Authors

  • Ai-Li Yang
  • Xue-Qi Chen

DOI:

https://doi.org/10.4208/eajam.300921.170422

Keywords:

Systems of linear equations, least-squares solution, randomized extended Gauss-Seidel method, convergence.

Abstract

A greedy Gauss-Seidel based on the greedy Kaczmarz algorithm and aimed to find approximations of the solution $A^†b$ of systems of linear algebraic equations with a full column-rank coefficient matrix $A$ is proposed. Developing this approach, we introduce a partially greedy randomized extended Gauss-Seidel method for finding approximate least-norm least-squares solutions of column-rank deficient linear systems. The convergence of the methods is studied. Numerical experiments show that the proposed methods are robust and efficient.

Published

2022-08-17

Issue

Section

Articles