Title :
Principal surfaces from unsupervised kernel regression
Author :
Meinicke, Peter ; Klanke, Stefan ; Memisevic, Roland ; Ritter, Helge
Author_Institution :
Dept. of Bioinformatics, Gottingen Univ., Germany
Abstract :
We propose a nonparametric approach to learning of principal surfaces based on an unsupervised formulation of the Nadaraya-Watson kernel regression estimator. As compared with previous approaches to principal curves and surfaces, the new method offers several advantages: first, it provides a practical solution to the model selection problem because all parameters can be estimated by leave-one-out cross-validation without additional computational cost. In addition, our approach allows for a convenient incorporation of nonlinear spectral methods for parameter initialization, beyond classical initializations based on linear PCA. Furthermore, it shows a simple way to fit principal surfaces in general feature spaces, beyond the usual data space setup. The experimental results illustrate these convenient features on simulated and real data.
Keywords :
principal component analysis; regression analysis; spectral analysis; unsupervised learning; leave-one-out cross-validation; linear PCA; nonlinear spectral methods; nonparametric approach; principal surfaces; unsupervised kernel regression; Kernel; Neural networks; Parameter estimation; Piecewise linear approximation; Principal component analysis; Self organizing feature maps; Spline; Supervised learning; Surface fitting; Surface topography; Index Terms- Dimensionality reduction; density estimation; kernel methods.; model selection; principal curves; principal surfaces; Algorithms; Artificial Intelligence; Information Storage and Retrieval; Models, Statistical; Pattern Recognition, Automated; Principal Component Analysis;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2005.183