Signal and image reconstruction with a double parameter Hager–Zhang‐type conjugate gradient method for system of nonlinear equations

Author:

Ahmed Kabiru12ORCID,Waziri Mohammed Yusuf12ORCID,Halilu Abubakar Sani23ORCID,Murtala Salisu24ORCID,Abdullahi Habibu23

Affiliation:

1. Department of Mathematical Sciences Bayero University Kano Nigeria

2. Numerical Optimization Research Group Bayero University Kano Nigeria

3. Department of Mathematics Sule Lamido University Kafin Hausa Nigeria

4. Department of Mathematics Federal University Dutse Nigeria

Abstract

AbstractThe one parameter conjugate gradient method by Hager and Zhang (Pac J Optim, 2(1):35–58, 2006) represents a family of descent iterative methods for solving large‐scale minimization problems. The nonnegative parameter of the scheme determines the weight of conjugacy and descent, and by extension, the numerical performance of the method. The scheme, however, does not converge globally for general nonlinear functions, and when the parameter approaches 0, the scheme reduces to the conjugate gradient method by Hestenes and Stiefel (J Res Nat Bur Stand, 49:409–436, 1952), which in practical sense does not perform well due to the jamming phenomenon. By carrying out eigenvalue analysis of an adaptive two parameter Hager–Zhang type method, a new scheme is presented for system of monotone nonlinear equations with its application in compressed sensing. The proposed scheme was inspired by nice attributes of the Hager–Zhang method and the various schemes designed with double parameters. The scheme is also applicable to nonsmooth nonlinear problems. Using fundamental assumptions, analysis of the global convergence of the scheme is conducted and preliminary report of numerical experiments carried out with the scheme and some recent methods indicate that the scheme is promising.

Publisher

Wiley

Reference67 articles.

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