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Hierarchical Convex Optimization by the Hybrid Steepest Descent Method with Proximal Splitting Operators—Enhancements of SVM and Lasso

Isao Yamada () and Masao Yamagishi ()
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Isao Yamada: Tokyo Institute of Technology, Department of Information and Communications Engineering
Masao Yamagishi: Tokyo Institute of Technology, Department of Information and Communications Engineering

Chapter Chapter 16 in Splitting Algorithms, Modern Operator Theory, and Applications, 2019, pp 413-489 from Springer

Abstract: Abstract The breakthrough ideas in the modern proximal splitting methodologies allow us to express the set of all minimizers of a superposition of multiple nonsmooth convex functions as the fixed point set of computable nonexpansive operators. In this paper, we present practical algorithmic strategies for the hierarchical convex optimization problems which require further strategic selection of a most desirable vector from the solution set of the standard convex optimization. The proposed algorithms are established by applying the hybrid steepest descent method to special nonexpansive operators designed through the art of proximal splitting. We also present applications of the proposed strategies to certain unexplored hierarchical enhancements of the support vector machine and the Lasso estimator.

Keywords: Convex optimization; Proximal splitting algorithms; Hybrid steepest descent method; Support Vector Machine (SVM); Lasso; TREX; Signal processing; Machine learning; Statistical estimation; 49M20; 65K10; 90C30 (search for similar items in EconPapers)
Date: 2019
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Persistent link: https://EconPapers.repec.org/RePEc:spr:sprchp:978-3-030-25939-6_16

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DOI: 10.1007/978-3-030-25939-6_16

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