DocumentCode
2371177
Title
Dimensionality reduction using kernel pooled local discriminant information
Author
Zhang, Peng ; Peng, Jing ; Domeniconi, Carlotta
Author_Institution
EECS Dept., Tulane Univ., New Orleans, LA, USA
fYear
2003
fDate
19-22 Nov. 2003
Firstpage
701
Lastpage
704
Abstract
We study the use of kernel subspace methods for learning low-dimensional representations for classification. We propose a kernel pooled local discriminant subspace method and compare it against several competing techniques: generalized Fisher discriminant analysis (GDA) and kernel principal components analysis (KPCA) in classification problems. We evaluate the classification performance of the nearest-neighbor rule with each subspace representation. The experimental results demonstrate the efficacy of the kernel pooled local subspace method and the potential for substantial improvements over competing methods such as KPCA in some classification problems.
Keywords
knowledge representation; learning (artificial intelligence); pattern classification; principal component analysis; Fisher discriminant analysis; dimensionality reduction; kernel pooled local discriminant information; kernel principal component analysis; nearest-neighbor rule; pattern classification; subspace representation; Computational efficiency; Data mining; Data preprocessing; Data visualization; Feature extraction; Gold; Kernel; Linear discriminant analysis; Null space; Principal component analysis;
fLanguage
English
Publisher
ieee
Conference_Titel
Data Mining, 2003. ICDM 2003. Third IEEE International Conference on
Print_ISBN
0-7695-1978-4
Type
conf
DOI
10.1109/ICDM.2003.1251012
Filename
1251012
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