Sciweavers

DAGM
2006
Springer

Model Selection in Kernel Methods Based on a Spectral Analysis of Label Information

13 years 8 months ago
Model Selection in Kernel Methods Based on a Spectral Analysis of Label Information
Abstract. We propose a novel method for addressing the model selection problem in the context of kernel methods. In contrast to existing methods which rely on hold-out testing or try to compensate for the optimism of the generalization error, our method is based on a structural analysis of the label information using the eigenstructure of the kernel matrix. In this setting, the label vector can be transformed into a representation in which the smooth information is easily discernible from the noise. This permits to estimate a cut-off dimension such that the leading coefficients in that representation contains the learnable information, discarding the noise. Based on this cut-off dimension, the regularization parameter is estimated for kernel ridge regression.
Mikio L. Braun, Tilman Lange, Joachim M. Buhmann
Added 22 Aug 2010
Updated 22 Aug 2010
Type Conference
Year 2006
Where DAGM
Authors Mikio L. Braun, Tilman Lange, Joachim M. Buhmann
Comments (0)