4.5 Article

Orthogonal series density estimation and the kernel eigenvalue problem

Journal

NEURAL COMPUTATION
Volume 14, Issue 3, Pages 669-688

Publisher

MIT PRESS
DOI: 10.1162/089976602317250942

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Kernel principal component analysis has been introduced as a method of extracting a set of orthonormal nonlinear features from multivariate data, and many impressive applications are being reported within the literature. This article presents the view that the eigenvalue decomposition of a kernel matrix can also provide the discrete expansion coefficients required for a nonparametric orthogonal series density estimator. In addition to providing novel insights into nonparametric density estimation, this article provides an intuitively appealing interpretation for the nonlinear features extracted from data using kernel principal component analysis.

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