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arxiv: 1008.1398 · v1 · pith:62QKJUZNnew · submitted 2010-08-08 · 💻 cs.LG

Semi-Supervised Kernel PCA

classification 💻 cs.LG
keywords kernelanalysisclassdatapointsachievesboundcomponents
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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.

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