Eintrag weiter verarbeiten
Buchumschlag von Subsampled inexact Newton methods for minimizing large sums of convex functions
Verfügbar über Online-Ressource

Subsampled inexact Newton methods for minimizing large sums of convex functions

Gespeichert in:

Bibliographische Detailangaben
Zeitschriftentitel: IMA Journal of Numerical Analysis
Personen und Körperschaften: Bellavia, Stefania, Krejić, Nataša, Krklec Jerinkić, Nataša
In: IMA Journal of Numerical Analysis, 40, 2020, 4, S. 2309-2341
Medientyp: E-Article
Sprache: Englisch
veröffentlicht:
Oxford University Press (OUP)
Schlagwörter:
Details
Zusammenfassung: <jats:title>Abstract</jats:title> <jats:p>This paper deals with the minimization of a large sum of convex functions by inexact Newton (IN) methods employing subsampled functions, gradients and Hessian approximations. The conjugate gradient method is used to compute the IN step and global convergence is enforced by a nonmonotone line-search procedure. The aim is to obtain methods with affordable costs and fast convergence. Assuming strongly convex functions, R-linear convergence and worst-case iteration complexity of the procedure are investigated when functions and gradients are approximated with increasing accuracy. A set of rules for the forcing parameters and subsample Hessian sizes are derived that ensure local q-linear/q-superlinear convergence of the proposed method. The random choice of the Hessian subsample is also considered and convergence in the mean square, both for finite and infinite sums of functions, is proved. Finally, the analysis of global convergence with asymptotic R-linear rate is extended to the case of the sum of convex functions and strongly convex objective function. Numerical results on well-known binary classification problems are also given. Adaptive strategies for selecting forcing terms and Hessian subsample size, streaming out of the theoretical analysis, are employed and the numerical results show that they yield effective IN methods.</jats:p>
Umfang: 2309-2341
ISSN: 0272-4979
1464-3642
DOI: 10.1093/imanum/drz027