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Generalized RMIL conjugate gradient method under the strong Wolfe line search with application in image processing

Aliyu Muhammed Awwal, Lin Wang, Poom Kumam, Ibrahim Mohammed Sulaiman, Sani Salisu, Nasiru Salihu, Petcharaporn Yodjai

2023Mathematical Methods in the Applied Sciences14 citationsDOIOpen Access PDF

Abstract

RMIL conjugate gradient method originally proposed by Rivaie et al. (2012) has recently gained lots of attention. In this article, we propose a generalized conjugate gradient parameter that contains both RMIL and its variant, that is, RMIL+, as special cases. We show that the search direction generated by the new method is sufficiently descent. Under standard mild conditions, we discuss the convergence analysis of the propose method. We demonstrate the numerical efficiency of the propose method on a set of unconstrained minimization benchmark test problems as well as an image restoration problem. The results of the experiment reveal that the proposed method performs better than its main competitors.

Topics & Concepts

Conjugate gradient methodLine searchMathematicsBenchmark (surveying)Gradient descentConvergence (economics)Image (mathematics)Nonlinear conjugate gradient methodMinificationDescent directionAlgorithmApplied mathematicsDescent (aeronautics)Mathematical optimizationComputer scienceArtificial intelligenceArtificial neural networkEngineeringGeodesyRADIUSEconomic growthAerospace engineeringComputer securityGeographyEconomicsSparse and Compressive Sensing TechniquesAdvanced Optimization Algorithms ResearchNumerical methods in inverse problems
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