Convergence analysis of a variable metric forward–backward splitting algorithm with applications

Abstract The forward–backward splitting algorithm is a popular operator-splitting method for solving monotone inclusion of the sum of a maximal monotone operator and an inverse strongly monotone operator. In this paper, we present a new convergence analysis of a variable metric forward–backward spli...

Full description

Bibliographic Details
Main Authors: Fuying Cui, Yuchao Tang, Chuanxi Zhu
Format: Article
Language:English
Published: SpringerOpen 2019-05-01
Series:Journal of Inequalities and Applications
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13660-019-2097-4
id doaj-e4a26bb50de743a59fc1cb551aef6d70
record_format Article
spelling doaj-e4a26bb50de743a59fc1cb551aef6d702020-11-25T03:21:58ZengSpringerOpenJournal of Inequalities and Applications1029-242X2019-05-012019112710.1186/s13660-019-2097-4Convergence analysis of a variable metric forward–backward splitting algorithm with applicationsFuying Cui0Yuchao Tang1Chuanxi Zhu2Department of Mathematics, Nanchang UniversityDepartment of Mathematics, Nanchang UniversityDepartment of Mathematics, Nanchang UniversityAbstract The forward–backward splitting algorithm is a popular operator-splitting method for solving monotone inclusion of the sum of a maximal monotone operator and an inverse strongly monotone operator. In this paper, we present a new convergence analysis of a variable metric forward–backward splitting algorithm with extended relaxation parameters in real Hilbert spaces. We prove that this algorithm is weakly convergent when certain weak conditions are imposed upon the relaxation parameters. Consequently, we recover the forward–backward splitting algorithm with variable step sizes. As an application, we obtain a variable metric forward–backward splitting algorithm for solving the minimization problem of the sum of two convex functions, where one of them is differentiable with a Lipschitz continuous gradient. Furthermore, we discuss the applications of this algorithm to the fundamental of the variational inequalities problem, constrained convex minimization problem, and split feasibility problem. Numerical experimental results on LASSO problem in statistical learning demonstrate the effectiveness of the proposed iterative algorithm.http://link.springer.com/article/10.1186/s13660-019-2097-4Forward–backward splitting algorithmMonotone inclusionVariable metricSplit feasibility problem
collection DOAJ
language English
format Article
sources DOAJ
author Fuying Cui
Yuchao Tang
Chuanxi Zhu
spellingShingle Fuying Cui
Yuchao Tang
Chuanxi Zhu
Convergence analysis of a variable metric forward–backward splitting algorithm with applications
Journal of Inequalities and Applications
Forward–backward splitting algorithm
Monotone inclusion
Variable metric
Split feasibility problem
author_facet Fuying Cui
Yuchao Tang
Chuanxi Zhu
author_sort Fuying Cui
title Convergence analysis of a variable metric forward–backward splitting algorithm with applications
title_short Convergence analysis of a variable metric forward–backward splitting algorithm with applications
title_full Convergence analysis of a variable metric forward–backward splitting algorithm with applications
title_fullStr Convergence analysis of a variable metric forward–backward splitting algorithm with applications
title_full_unstemmed Convergence analysis of a variable metric forward–backward splitting algorithm with applications
title_sort convergence analysis of a variable metric forward–backward splitting algorithm with applications
publisher SpringerOpen
series Journal of Inequalities and Applications
issn 1029-242X
publishDate 2019-05-01
description Abstract The forward–backward splitting algorithm is a popular operator-splitting method for solving monotone inclusion of the sum of a maximal monotone operator and an inverse strongly monotone operator. In this paper, we present a new convergence analysis of a variable metric forward–backward splitting algorithm with extended relaxation parameters in real Hilbert spaces. We prove that this algorithm is weakly convergent when certain weak conditions are imposed upon the relaxation parameters. Consequently, we recover the forward–backward splitting algorithm with variable step sizes. As an application, we obtain a variable metric forward–backward splitting algorithm for solving the minimization problem of the sum of two convex functions, where one of them is differentiable with a Lipschitz continuous gradient. Furthermore, we discuss the applications of this algorithm to the fundamental of the variational inequalities problem, constrained convex minimization problem, and split feasibility problem. Numerical experimental results on LASSO problem in statistical learning demonstrate the effectiveness of the proposed iterative algorithm.
topic Forward–backward splitting algorithm
Monotone inclusion
Variable metric
Split feasibility problem
url http://link.springer.com/article/10.1186/s13660-019-2097-4
work_keys_str_mv AT fuyingcui convergenceanalysisofavariablemetricforwardbackwardsplittingalgorithmwithapplications
AT yuchaotang convergenceanalysisofavariablemetricforwardbackwardsplittingalgorithmwithapplications
AT chuanxizhu convergenceanalysisofavariablemetricforwardbackwardsplittingalgorithmwithapplications
_version_ 1724612053772009472