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 asa 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 PCAlive 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