Kernel PCA and De-Noising in Feature Spaces
Mika, Sebastian, Schölkopf, Bernhard, Smola, Alex J., Müller, Klaus-Robert, Scholz, Matthias, Rätsch, Gunnar
–Neural Information Processing Systems
Kernel PCA as a nonlinear feature extractor has proven powerful as a preprocessing step for classification algorithms. But it can also be considered as a natural generalization of linear principal component analysis. This gives rise to the question how to use nonlinear features for data compression, reconstruction, and de-noising, applications common in linear PCA. This is a nontrivial task, as the results provided by kernel PCA live in some high dimensional feature space and need not have pre-images in input space. This work presents ideas for finding approximate pre-images, focusing on Gaussian kernels, and shows experimental results using these pre-images in data reconstruction and de-noising on toy examples as well as on real world data.
Neural Information Processing Systems
Dec-31-1999
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