An Empirical Study of Dimensionality Reduction in Support Vector Machine

Recently, the the support vector machine (SVM) has become a popular tool in time series forecasting. In developing a successful SVM forecaster, the first step is feature extraction. This paper proposes the applications of principal component analysis (PCA), kernel principal component analysis (KPCA)...

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Main Authors: Cao, Lijuan, Zhang, Jingqing, Cai, Zongwu, Lim, Kian Guan
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語言:English
出版: Institutional Knowledge at Singapore Management University 2006
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https://www.highbeam.com/doc/1P3-1302418071.html
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spelling sg-smu-ink.lkcsb_research-34482011-01-25T06:14:00Z An Empirical Study of Dimensionality Reduction in Support Vector Machine Cao, Lijuan Zhang, Jingqing Cai, Zongwu Lim, Kian Guan Recently, the the support vector machine (SVM) has become a popular tool in time series forecasting. In developing a successful SVM forecaster, the first step is feature extraction. This paper proposes the applications of principal component analysis (PCA), kernel principal component analysis (KPCA) and independent component analysis (ICA) to SVM for feature extraction. The PCA linearly transforms the original inputs into new uncorrelated features. The KPCA is a nonlinear PCA developed by using the kernel method. In ICA, the original inputs are linearly transformed into features which are mutually statistically independent. By examining the sunspot data, Santa Fe data set A and five real futures contracts, the experiment shows that SVM by feature extraction using PCA, KPCA or ICA can perform better than that without feature extraction. Furthermore, among the three methods, there is the best performance in the KPCA feature extraction, followed by the ICA feature extraction. 2006-06-01T07:00:00Z text https://ink.library.smu.edu.sg/lkcsb_research/2449 https://www.highbeam.com/doc/1P3-1302418071.html Research Collection Lee Kong Chian School Of Business eng Institutional Knowledge at Singapore Management University Portfolio and Security Analysis
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Portfolio and Security Analysis
spellingShingle Portfolio and Security Analysis
Cao, Lijuan
Zhang, Jingqing
Cai, Zongwu
Lim, Kian Guan
An Empirical Study of Dimensionality Reduction in Support Vector Machine
description Recently, the the support vector machine (SVM) has become a popular tool in time series forecasting. In developing a successful SVM forecaster, the first step is feature extraction. This paper proposes the applications of principal component analysis (PCA), kernel principal component analysis (KPCA) and independent component analysis (ICA) to SVM for feature extraction. The PCA linearly transforms the original inputs into new uncorrelated features. The KPCA is a nonlinear PCA developed by using the kernel method. In ICA, the original inputs are linearly transformed into features which are mutually statistically independent. By examining the sunspot data, Santa Fe data set A and five real futures contracts, the experiment shows that SVM by feature extraction using PCA, KPCA or ICA can perform better than that without feature extraction. Furthermore, among the three methods, there is the best performance in the KPCA feature extraction, followed by the ICA feature extraction.
format text
author Cao, Lijuan
Zhang, Jingqing
Cai, Zongwu
Lim, Kian Guan
author_facet Cao, Lijuan
Zhang, Jingqing
Cai, Zongwu
Lim, Kian Guan
author_sort Cao, Lijuan
title An Empirical Study of Dimensionality Reduction in Support Vector Machine
title_short An Empirical Study of Dimensionality Reduction in Support Vector Machine
title_full An Empirical Study of Dimensionality Reduction in Support Vector Machine
title_fullStr An Empirical Study of Dimensionality Reduction in Support Vector Machine
title_full_unstemmed An Empirical Study of Dimensionality Reduction in Support Vector Machine
title_sort empirical study of dimensionality reduction in support vector machine
publisher Institutional Knowledge at Singapore Management University
publishDate 2006
url https://ink.library.smu.edu.sg/lkcsb_research/2449
https://www.highbeam.com/doc/1P3-1302418071.html
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