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Efficient hybrid conjugate gradient techniques for vector optimization

Jamilu Yahaya, Poom Kumam

2023Results in Control and Optimization15 citationsDOIOpen Access PDF

Abstract

Scalarization approaches transform vector optimization problems (VOPs) into single-objective optimization but have trade-offs: information loss, subjective weight assignments, and limited representation of the Pareto front. To address these limitations, alternative strategies like conjugate gradient (CG) techniques are valuable for their simplicity and less memory usage. The paper introduces three CG techniques for VOPs, including two CG techniques that satisfy sufficient descent conditions (SDC) without a line search. These two CG techniques are combined with the third CG technique, a variant of the Polak-Ribiére-Polyak (PRP) technique, resulting in two hybrid CG techniques. Global convergence of these hybrids is achieved, without convexity assumptions, under standard assumptions and Wolfe line search. Numerical analysis and comparisons with nonnegative PRP and Liu-Storey (LS) CG techniques showcase the implementation and effectiveness of our hybrid CG techniques. The results demonstrate the promise of our hybrids techniques.

Topics & Concepts

Line searchConjugate gradient methodConvexityNonlinear conjugate gradient methodConvergence (economics)Mathematical optimizationRepresentation (politics)Gradient descentMulti-objective optimizationComputer scienceMathematicsLine (geometry)AlgorithmArtificial intelligenceArtificial neural networkRADIUSEconomic growthPolitical scienceFinancial economicsEconomicsGeometryComputer securityPoliticsLawAdvanced Optimization Algorithms ResearchOptimization and Variational AnalysisAdvanced Multi-Objective Optimization Algorithms
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