Optimization of SVM Multiclass by Particle Swarm (PSO-SVM)

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Author(s)

Fatima Ardjani 1,* Kaddour Sadouni 1

1. University of Sciences and Technology - Mohamed Boudiaf- USTOran/Computer Science Department, Laboratory LAMOSI, Oran, algeria

* Corresponding author.

DOI: https://doi.org/10.5815/ijmecs.2010.02.05

Received: 26 Aug. 2010 / Revised: 15 Oct. 2010 / Accepted: 3 Nov. 2010 / Published: 8 Dec. 2010

Index Terms

SVM multiclass, PSO, TIMIT, evolutionary method, optimization

Abstract

In many problems of classification, the performances of a classifier are often evaluated by a factor (rate of error).the factor is not well adapted for the complex real problems, in particular the problems multiclass. Our contribution consists in adapting an evolutionary method for optimization of this factor. Among the methods of optimization used we chose the method PSO (Particle Swarm Optimization) which makes it possible to optimize the performance of classifier SVM (Separating with Vast Margin). The experiments are carried out on corpus TIMIT. The results obtained show that approach PSO-SVM gives a better classification in terms of accuracy even though the execution time is increased.

Cite This Paper

Fatima Ardjani, Kaddour Sadouni, "Optimization of SVM Multiclass by Particle Swarm (PSO-SVM)", International Journal of Modern Education and Computer Science(IJMECS), vol.2, no.2, pp.32-38, 2010. DOI:10.5815/ijmecs.2010.02.05

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