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A kernel-based analysis of Laplacian Eigenmaps

26 February 2024
Martin Wahl
ArXiv (abs)PDFHTML
Abstract

Given i.i.d. observations uniformly distributed on a closed manifold M⊆Rp\mathcal{M}\subseteq \mathbb{R}^pM⊆Rp, we study the spectral properties of the associated empirical graph Laplacian based on a Gaussian kernel. Our main results are non-asymptotic error bounds, showing that the eigenvalues and eigenspaces of the empirical graph Laplacian are close to the eigenvalues and eigenspaces of the Laplace-Beltrami operator of M\mathcal{M}M. In our analysis, we connect the empirical graph Laplacian to kernel principal component analysis, and consider the heat kernel of M\mathcal{M}M as reproducing kernel feature map. This leads to novel points of view and allows to leverage results for empirical covariance operators in infinite dimensions.

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