A Hybrid Gini PSO-SVM Feature Selection: An Empirical Study of Population Sizes on Different Classifier

A performance of anti-spam filter not only depends on the number of features and types of classifier that are used, but it also depends on the other parameter settings. Deriving from previous experiments, we extended our work by investigating the effect of population sizes from our proposed met...

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Main Authors: Noormadinah Allias, Megat NorulAzmi Megat Mohamed Noor, Mohd. Nazri Ismail, Kim de Silva, (UniKL MIIT)
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Published: 2014
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Online Access:http://localhost/xmlui/handle/123456789/6305
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Institution: Universiti Kuala Lumpur
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spelling my.unikl.ir-63052014-04-24T02:56:16Z A Hybrid Gini PSO-SVM Feature Selection: An Empirical Study of Population Sizes on Different Classifier Noormadinah Allias Megat NorulAzmi Megat Mohamed Noor Mohd. Nazri Ismail Kim de Silva (UniKL MIIT) swarm size taguchi method orthogonal array learning algorithms A performance of anti-spam filter not only depends on the number of features and types of classifier that are used, but it also depends on the other parameter settings. Deriving from previous experiments, we extended our work by investigating the effect of population sizes from our proposed method of feature selection on different learning classifier algorithms using Random Forest, Voting, Decision Tree, Support Vector Machine and Stacking. The experiment was conducted on Ling-Spam email dataset. The results showed that the Decision Tree with the smallest size of population is able to give the best result compared to NB, SVM, RF, stacking and voting.A performance of anti-spam filter not only depends on the number of features and types of classifier that are used, but it also depends on the other parameter settings. Deriving from previous experiments, we extended our work by investigating the effect of population sizes from our proposed method of feature selection on different learning classifier algorithms using Random Forest, Voting, Decision Tree, Support Vector Machine and Stacking. The experiment was conducted on Ling-Spam email dataset. The results showed that the Decision Tree with the smallest size of population is able to give the best result compared to NB, SVM, RF, stacking and voting. 2014-04-24T02:56:16Z 2014-04-24T02:56:16Z 2014-04-24 http://localhost/xmlui/handle/123456789/6305 Proceeding of: International Conference on Artificial Intelligence, Modelling & Simulation;
institution Universiti Kuala Lumpur
building UniKL Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Kuala Lumpur
content_source UniKL Institutional Repository
url_provider http://ir.unikl.edu.my/
topic swarm size
taguchi method
orthogonal array
learning algorithms
spellingShingle swarm size
taguchi method
orthogonal array
learning algorithms
Noormadinah Allias
Megat NorulAzmi Megat Mohamed Noor
Mohd. Nazri Ismail
Kim de Silva
(UniKL MIIT)
A Hybrid Gini PSO-SVM Feature Selection: An Empirical Study of Population Sizes on Different Classifier
description A performance of anti-spam filter not only depends on the number of features and types of classifier that are used, but it also depends on the other parameter settings. Deriving from previous experiments, we extended our work by investigating the effect of population sizes from our proposed method of feature selection on different learning classifier algorithms using Random Forest, Voting, Decision Tree, Support Vector Machine and Stacking. The experiment was conducted on Ling-Spam email dataset. The results showed that the Decision Tree with the smallest size of population is able to give the best result compared to NB, SVM, RF, stacking and voting.A performance of anti-spam filter not only depends on the number of features and types of classifier that are used, but it also depends on the other parameter settings. Deriving from previous experiments, we extended our work by investigating the effect of population sizes from our proposed method of feature selection on different learning classifier algorithms using Random Forest, Voting, Decision Tree, Support Vector Machine and Stacking. The experiment was conducted on Ling-Spam email dataset. The results showed that the Decision Tree with the smallest size of population is able to give the best result compared to NB, SVM, RF, stacking and voting.
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author Noormadinah Allias
Megat NorulAzmi Megat Mohamed Noor
Mohd. Nazri Ismail
Kim de Silva
(UniKL MIIT)
author_facet Noormadinah Allias
Megat NorulAzmi Megat Mohamed Noor
Mohd. Nazri Ismail
Kim de Silva
(UniKL MIIT)
author_sort Noormadinah Allias
title A Hybrid Gini PSO-SVM Feature Selection: An Empirical Study of Population Sizes on Different Classifier
title_short A Hybrid Gini PSO-SVM Feature Selection: An Empirical Study of Population Sizes on Different Classifier
title_full A Hybrid Gini PSO-SVM Feature Selection: An Empirical Study of Population Sizes on Different Classifier
title_fullStr A Hybrid Gini PSO-SVM Feature Selection: An Empirical Study of Population Sizes on Different Classifier
title_full_unstemmed A Hybrid Gini PSO-SVM Feature Selection: An Empirical Study of Population Sizes on Different Classifier
title_sort hybrid gini pso-svm feature selection: an empirical study of population sizes on different classifier
publishDate 2014
url http://localhost/xmlui/handle/123456789/6305
_version_ 1644484807856488448