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Feature selection for Support Vector Machines via Mixed Integer Linear Programming

Authors :
Juan J. Pérez
Martine Labbé
Richard Weber
Sebastián Maldonado
LMU EC (Entrepreneurship Center)
Graphes et Optimisation Mathématique [Bruxelles] (GOM)
Université libre de Bruxelles (ULB)
Fortz, Bernard
Source :
Information Sciences, Information Sciences, Elsevier, 2014, 279, pp.163-175
Publication Year :
2014
Publisher :
HAL CCSD, 2014.

Abstract

The performance of classification methods, such as Support Vector Machines, depends heavily on the proper choice of the feature set used to construct the classifier. Feature selection is an NP-hard problem that has been studied extensively in the literature. Most strategies propose the elimination of features independently of classifier construction by exploiting statistical properties of each of the variables, or via greedy search. All such strategies are heuristic by nature. In this work we propose two different Mixed Integer Linear Programming formulations based on extensions of Support Vector Machines to overcome these shortcomings. The proposed approaches perform variable selection simultaneously with classifier construction using optimization models. We ran experiments on real-world benchmark datasets, comparing our approaches with well-known feature selection techniques and obtained better predictions with consistently fewer relevant features.

Details

Language :
English
ISSN :
00200255
Database :
OpenAIRE
Journal :
Information Sciences, Information Sciences, Elsevier, 2014, 279, pp.163-175
Accession number :
edsair.doi.dedup.....d041dd864b5be66f1a4060a43eb1dd3f