Please use this identifier to cite or link to this item: https://repository.iimb.ac.in/handle/2074/11207
Title: Lagrangian relaxation for SVM feature selection
Authors: Gaudioso, Manlio 
Gorgone, Enrico 
Labb, Martine 
Rodrguez-Cha, Antonio M 
Keywords: Feature Selection;Lagrangian Relaxation;Nonsmooth Optimization;SVM Classification
Issue Date: 2017
Publisher: Elsevier
Abstract: We discuss a Lagrangian-relaxation-based heuristics for dealing with feature selection in the Support Vector Machine (SVM) framework for binary classification. In particular we embed into our objective function a weighted combination of the L1 and L0 norm of the normal to the separating hyperplane. We come out with a Mixed Binary Linear Programming problem which is suitable for a Lagrangian relaxation approach. Based on a property of the optimal multiplier setting, we apply a consolidated nonsmooth optimization ascent algorithm to solve the resulting Lagrangian dual. In the proposed approach we get, at every ascent step, both a lower bound on the optimal solution as well as a feasible solution at low computational cost. We present the results of our numerical experiments on some benchmark datasets.
URI: https://repository.iimb.ac.in/handle/2074/11207
ISSN: 0305-0548
DOI: 10.1016/J.COR.2017.06.001
Appears in Collections:2010-2019

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