Litcius/Paper detail

Proximal gradient methods beyond monotony

Alberto De Marchi

2023Journal of Nonsmooth Analysis and Optimization13 citationsDOIOpen Access PDF

Abstract

We address composite optimization problems, which consist in minimizing the sum of a smooth and a merely lower semicontinuous function, without any convexity assumptions. Numerical solutions of these problems can be obtained by proximal gradient methods, which often rely on a line search procedure as globalization mechanism. We consider an adaptive nonmonotone proximal gradient scheme based on an averaged merit function and establish asymptotic convergence guarantees under weak assumptions, delivering results on par with the monotone strategy. Global worst-case rates for the iterates and a stationarity measure are also derived. Finally, a numerical example indicates the potential of nonmonotonicity and spectral approximations.

Topics & Concepts

ConvexityIterated functionMonotone polygonLine searchConvergence (economics)Function (biology)Monotonic functionApplied mathematicsMathematical optimizationMathematicsBalanced flowMeasure (data warehouse)Computer scienceMathematical analysisFinancial economicsEvolutionary biologyComputer securityDatabaseEconomicsGeometryBiologyEconomic growthRADIUSAdvanced Optimization Algorithms ResearchOptimization and Variational AnalysisSparse and Compressive Sensing Techniques