Intelligent classification algorithms in enhancing the performance of support vector machine

Performing feature subset and tuning support vector machine (SVM) parameter processes in parallel with the aim to increase the classification accuracy is the current research direction in SVM. Common methods associated in tuning SVM parameters will discretize the continuous value of these parameters...

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Main Authors: Alwan, Hiba Basim, Ku-Mahamud, Ku Ruhana
Format: Article
Language:English
Published: Little Lion Scientific 2019
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Online Access:http://repo.uum.edu.my/27867/1/JIAIT%2097%202%202019%20664%20657.pdf
http://repo.uum.edu.my/27867/
http://www.jatit.org/volumes/ninetyseven2.php
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spelling my.uum.repo.278672020-11-10T05:59:16Z http://repo.uum.edu.my/27867/ Intelligent classification algorithms in enhancing the performance of support vector machine Alwan, Hiba Basim Ku-Mahamud, Ku Ruhana QA75 Electronic computers. Computer science Performing feature subset and tuning support vector machine (SVM) parameter processes in parallel with the aim to increase the classification accuracy is the current research direction in SVM. Common methods associated in tuning SVM parameters will discretize the continuous value of these parameters which will result in low classification performance. This paper presents two intelligent algorithms that hybridized between ant colony optimization (ACO) and SVM for tuning SVM parameters and selecting feature subset without having to discretize the continuous values. This can be achieved by simultaneously executing the selection of feature subset and tuning SVM parameters simultaneously. The algorithms are called ACOMVSVM and IACOMV-SVM. The difference between the algorithms is the size of the solution archive. The size of the archive in ACOMV is fixed while in IACOMV, the size of solution archive increases as the optimization procedure progress. Eight benchmark datasets from UCI were used in the experiments to validate the performance of the proposed algorithms. Experimental results obtained from the proposed algorithms are better when compared with other approaches in terms of classification accuracy. The average classification accuracies for the proposed ACOMV–SVM and IACOMV-SVM algorithms are 97.28 and 97.91 respectively. The work in this paper also contributes to a new direction for ACO that can deal with mixed variable ACO. Little Lion Scientific 2019 Article PeerReviewed application/pdf en http://repo.uum.edu.my/27867/1/JIAIT%2097%202%202019%20664%20657.pdf Alwan, Hiba Basim and Ku-Mahamud, Ku Ruhana (2019) Intelligent classification algorithms in enhancing the performance of support vector machine. Journal of Theoretical and Applied Information Technology, 97 (2). pp. 644-657. ISSN 19928645 http://www.jatit.org/volumes/ninetyseven2.php
institution Universiti Utara Malaysia
building UUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Utara Malaysia
content_source UUM Institutional Repository
url_provider http://repo.uum.edu.my/
language English
topic QA75 Electronic computers. Computer science
spellingShingle QA75 Electronic computers. Computer science
Alwan, Hiba Basim
Ku-Mahamud, Ku Ruhana
Intelligent classification algorithms in enhancing the performance of support vector machine
description Performing feature subset and tuning support vector machine (SVM) parameter processes in parallel with the aim to increase the classification accuracy is the current research direction in SVM. Common methods associated in tuning SVM parameters will discretize the continuous value of these parameters which will result in low classification performance. This paper presents two intelligent algorithms that hybridized between ant colony optimization (ACO) and SVM for tuning SVM parameters and selecting feature subset without having to discretize the continuous values. This can be achieved by simultaneously executing the selection of feature subset and tuning SVM parameters simultaneously. The algorithms are called ACOMVSVM and IACOMV-SVM. The difference between the algorithms is the size of the solution archive. The size of the archive in ACOMV is fixed while in IACOMV, the size of solution archive increases as the optimization procedure progress. Eight benchmark datasets from UCI were used in the experiments to validate the performance of the proposed algorithms. Experimental results obtained from the proposed algorithms are better when compared with other approaches in terms of classification accuracy. The average classification accuracies for the proposed ACOMV–SVM and IACOMV-SVM algorithms are 97.28 and 97.91 respectively. The work in this paper also contributes to a new direction for ACO that can deal with mixed variable ACO.
format Article
author Alwan, Hiba Basim
Ku-Mahamud, Ku Ruhana
author_facet Alwan, Hiba Basim
Ku-Mahamud, Ku Ruhana
author_sort Alwan, Hiba Basim
title Intelligent classification algorithms in enhancing the performance of support vector machine
title_short Intelligent classification algorithms in enhancing the performance of support vector machine
title_full Intelligent classification algorithms in enhancing the performance of support vector machine
title_fullStr Intelligent classification algorithms in enhancing the performance of support vector machine
title_full_unstemmed Intelligent classification algorithms in enhancing the performance of support vector machine
title_sort intelligent classification algorithms in enhancing the performance of support vector machine
publisher Little Lion Scientific
publishDate 2019
url http://repo.uum.edu.my/27867/1/JIAIT%2097%202%202019%20664%20657.pdf
http://repo.uum.edu.my/27867/
http://www.jatit.org/volumes/ninetyseven2.php
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score 13.149126