A Linear-RBF Multikernel SVM to Classify Big Text Corpora

Support vector machine (SVM) is a powerful technique for classification. However, SVM is not suitable for classification of large datasets or text corpora, because the training complexity of SVMs is highly dependent on the input size. Recent developments in the literature on the SVM and other kernel...

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Main Authors: R. Romero, E. L. Iglesias, L. Borrajo
Format: Article
Language:English
Published: Hindawi Limited 2015-01-01
Series:BioMed Research International
Online Access:http://dx.doi.org/10.1155/2015/878291
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spelling doaj-5e0a8295fb6b47c7b2bc1be94919c56a2020-11-24T23:15:30ZengHindawi LimitedBioMed Research International2314-61332314-61412015-01-01201510.1155/2015/878291878291A Linear-RBF Multikernel SVM to Classify Big Text CorporaR. Romero0E. L. Iglesias1L. Borrajo2Department of Computer Science, Higher Technical School of Computer Engineering, University of Vigo, 32004 Ourense, SpainDepartment of Computer Science, Higher Technical School of Computer Engineering, University of Vigo, 32004 Ourense, SpainDepartment of Computer Science, Higher Technical School of Computer Engineering, University of Vigo, 32004 Ourense, SpainSupport vector machine (SVM) is a powerful technique for classification. However, SVM is not suitable for classification of large datasets or text corpora, because the training complexity of SVMs is highly dependent on the input size. Recent developments in the literature on the SVM and other kernel methods emphasize the need to consider multiple kernels or parameterizations of kernels because they provide greater flexibility. This paper shows a multikernel SVM to manage highly dimensional data, providing an automatic parameterization with low computational cost and improving results against SVMs parameterized under a brute-force search. The model consists in spreading the dataset into cohesive term slices (clusters) to construct a defined structure (multikernel). The new approach is tested on different text corpora. Experimental results show that the new classifier has good accuracy compared with the classic SVM, while the training is significantly faster than several other SVM classifiers.http://dx.doi.org/10.1155/2015/878291
collection DOAJ
language English
format Article
sources DOAJ
author R. Romero
E. L. Iglesias
L. Borrajo
spellingShingle R. Romero
E. L. Iglesias
L. Borrajo
A Linear-RBF Multikernel SVM to Classify Big Text Corpora
BioMed Research International
author_facet R. Romero
E. L. Iglesias
L. Borrajo
author_sort R. Romero
title A Linear-RBF Multikernel SVM to Classify Big Text Corpora
title_short A Linear-RBF Multikernel SVM to Classify Big Text Corpora
title_full A Linear-RBF Multikernel SVM to Classify Big Text Corpora
title_fullStr A Linear-RBF Multikernel SVM to Classify Big Text Corpora
title_full_unstemmed A Linear-RBF Multikernel SVM to Classify Big Text Corpora
title_sort linear-rbf multikernel svm to classify big text corpora
publisher Hindawi Limited
series BioMed Research International
issn 2314-6133
2314-6141
publishDate 2015-01-01
description Support vector machine (SVM) is a powerful technique for classification. However, SVM is not suitable for classification of large datasets or text corpora, because the training complexity of SVMs is highly dependent on the input size. Recent developments in the literature on the SVM and other kernel methods emphasize the need to consider multiple kernels or parameterizations of kernels because they provide greater flexibility. This paper shows a multikernel SVM to manage highly dimensional data, providing an automatic parameterization with low computational cost and improving results against SVMs parameterized under a brute-force search. The model consists in spreading the dataset into cohesive term slices (clusters) to construct a defined structure (multikernel). The new approach is tested on different text corpora. Experimental results show that the new classifier has good accuracy compared with the classic SVM, while the training is significantly faster than several other SVM classifiers.
url http://dx.doi.org/10.1155/2015/878291
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