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Semi-Supervised Kernel PCA

Authors :
Walder, Christian
Henao, Ricardo
Mørup, Morten
Hansen, Lars Kai
Source :
Walder, C, Henao, R, Mørup, M & Hansen, L K 2010, Semi-Supervised Kernel PCA . IMM-Technical Report-2010-10, Technical University of Denmark, DTU Informatics, Building 321, Kgs. Lyngby, Denmark .
Publication Year :
2010
Publisher :
Technical University of Denmark, DTU Informatics, Building 321, 2010.

Abstract

We present three generalisations of Kernel Principal Components Analysis (KPCA) which incorporate knowledge of the class labels of a subset of the data points. The first, MV-KPCA, penalises within class variances similar to Fisher discriminant analysis. The second, LSKPCA is a hybrid of least squares regression and kernel PCA. The final LR-KPCA is an iteratively reweighted version of the previous which achieves a sigmoid loss function on the labeled points. We provide a theoretical risk bound as well as illustrative experiments on real and toy data sets.

Details

Language :
English
Database :
OpenAIRE
Journal :
Walder, C, Henao, R, Mørup, M & Hansen, L K 2010, Semi-Supervised Kernel PCA . IMM-Technical Report-2010-10, Technical University of Denmark, DTU Informatics, Building 321, Kgs. Lyngby, Denmark .
Accession number :
edsair.od......1202..5b90db3cc3bf444cc17a85d04a5daf08