Article ID Journal Published Year Pages File Type
415968 Computational Statistics & Data Analysis 2010 13 Pages PDF
Abstract

Kernel Principal Component Analysis extends linear PCA from a Euclidean space to any reproducing kernel Hilbert space. Robustness issues for Kernel PCA are studied. The sensitivity of Kernel PCA to individual observations is characterized by calculating the influence function. A robust Kernel PCA method is proposed by incorporating kernels in the Spherical PCA algorithm. Using the scores from Spherical Kernel PCA, a graphical diagnostic is proposed to detect points that are influential for ordinary Kernel PCA.

Related Topics
Physical Sciences and Engineering Computer Science Computational Theory and Mathematics
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