Volume 9 Number 3 (Mar. 2014)
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JCP 2014 Vol.9(3): 576-580 ISSN: 1796-203X
doi: 10.4304/jcp.9.3.576-580

An Efficient Dimensionality Reduction Approach for Small-sample Size and High-dimensional Data Modeling

Xintao Qiu1, Dongmei Fu1, Zhenduo Fu2
1School of Automation and Electrical Engineering, University of Science and Technology Beijing, Beijing, China
2Research and Development Department, Endress Hauser Shanghai Automation Equipment Co. Ltd, Shanghai, China


Abstract—As for massive multidimensional data are being generated in a wide range of emerging applications, this paper introduces two new methods of dimension reduction to conduct small-sample size and high-dimensional data processing and modeling. Through combining the support vector machine (SVM) and recursive feature elimination (RFE), SVM-RFE algorithm is proposed to select features, and further, adding the higher order singular value decomposition (HOSVD) to the feature extraction which involves successfully organizing the data into high order tensor pattern. The validation of simulation experiment data shows that the proposed novel feature selection and feature extraction methods can be effectively applied to the research work for analyzing and modeling the data of atmospheric corrosion. The feature selection method pledges that the remaining feature subset is optimal; feature extraction method reserves the original structure, discriminate information, and the integrity of data, etc. Finally, this paper proposes a complete data dimensionality reduction solution that can effectively solve the high-dimensional small sample data problem, and code programming for this solution has been implemented.

Index Terms—feature selection, feature extraction, dimensionality reduction, small-sample data, atmospheric corrosion prediction

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Cite: Xintao Qiu, Dongmei Fu, Zhenduo Fu, "An Efficient Dimensionality Reduction Approach for Small-sample Size and High-dimensional Data Modeling," Journal of Computers vol. 9, no. 3, pp. 576-580, 2014.

General Information

ISSN: 1796-203X
Abbreviated Title: J.Comput.
Frequency: Bimonthly
Editor-in-Chief: Prof. Liansheng Tan
Executive Editor: Ms. Nina Lee
Abstracting/ Indexing: DBLP, EBSCO,  ProQuest, INSPEC, ULRICH's Periodicals Directory, WorldCat,etc
E-mail: jcp@iap.org
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