SICE Annual Conference Program and Abstracts
SICE Annual Conference 2002
会議情報

Application of Kernel Principal Components Analysis to Pattern Recognitions
Kosuke SoharaManabu Kotani
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会議録・要旨集 フリー

p. 161

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抄録
Kernel Principal Component Analysis (Kernel PCA) is one of the methods to perform PCA in high dimensional space. The purpose of this paper is to examine what components are obtained by Kernel PCA and evaluate effectiveness of the components as feature. Simulation’s results show that Kernel PCA can get superior performance to PCA.
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© 2002 SICE
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