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Generalized self-concordant analysis of Frank-Wolfe algorithms

Authors :
Pavel Dvurechensky
Kamil Safin
Shimrit Shtern
Mathias Staudigl
Dept. of Advanced Computing Sciences
RS: FSE DACS
Source :
Mathematical Programming, 198(1), 255-323. Springer Verlag
Publication Year :
2023
Publisher :
Springer Verlag, 2023.

Abstract

Projection-free optimization via different variants of the Frank-Wolfe (FW) method has become one of the cornerstones in large scale optimization for machine learning and computational statistics. Numerous applications within these fields involve the minimization of functions with self-concordance like properties. Such generalized self-concordant (GSC) functions do not necessarily feature a Lipschitz continuous gradient, nor are they strongly convex. Indeed, in a number of applications, e.g. inverse covariance estimation or distance-weighted discrimination problems in support vector machines, the loss is given by a GSC function having unbounded curvature, implying absence of theoretical guarantees for the existing FW methods. This paper closes this apparent gap in the literature by developing provably convergent FW algorithms with standard O(1/k) convergence rate guarantees. If the problem formulation allows the efficient construction of a local linear minimization oracle, we develop a FW method with linear convergence rate.<br />This is an extended version of the conference paper arXiv:2002.04320

Details

Language :
English
ISSN :
00255610
Volume :
198
Issue :
1
Database :
OpenAIRE
Journal :
Mathematical Programming
Accession number :
edsair.doi.dedup.....bb461cad39ac0cff1f18085909283227