DocumentCode :
3549176
Title :
Combining variable selection with dimensionality reduction
Author :
Wolf, Lior ; Bileschi, Stan
Author_Institution :
The Center for Biol. & Computational Learning, Massachusetts Inst. of Technol., MA, USA
Volume :
2
fYear :
2005
fDate :
20-25 June 2005
Firstpage :
801
Abstract :
This paper bridges the gap between variable selection methods (e.g., Pearson coefficients, KS test) and dimensionality reduction algorithms (e.g., PCA, LDA). Variable selection algorithms encounter difficulties dealing with highly correlated data, since many features are similar in quality. Dimensionality reduction algorithms tend to combine all variables and cannot select a subset of significant variables. Our approach combines both methodologies by applying variable selection followed by dimensionality reduction. This combination makes sense only when using the same utility function in both stages, which we do. The resulting algorithm benefits from complex features as variable selection algorithms do, and at the same time enjoys the benefits of dimensionality reduction.
Keywords :
feature extraction; learning (artificial intelligence); statistical analysis; support vector machines; KS test; LDA; PCA; Pearson coefficients; SVM; correlated data; dimensionality reduction algorithm; feature selection; utility function; variable selection algorithms; Biology computing; Bridges; Data mining; Diversity reception; Input variables; Linear discriminant analysis; Principal component analysis; Support vector machines; Testing; Time measurement;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer Vision and Pattern Recognition, 2005. CVPR 2005. IEEE Computer Society Conference on
ISSN :
1063-6919
Print_ISBN :
0-7695-2372-2
Type :
conf
DOI :
10.1109/CVPR.2005.103
Filename :
1467525
Link To Document :
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