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Error estimates for spectral convergence of the graph Laplacian on random geometric graphs towards the Laplace--Beltrami operator

30 January 2018
Nicolas García Trillos
Moritz Gerlach
Matthias Hein
D. Slepčev
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Abstract

We study the convergence of the graph Laplacian of a random geometric graph generated by an i.i.d. sample from a mmm-dimensional submanifold MMM in RdR^dRd as the sample size nnn increases and the neighborhood size hhh tends to zero. We show that eigenvalues and eigenvectors of the graph Laplacian converge with a rate of O((log⁡nn)12m)O\Big(\big(\frac{\log n}{n}\big)^\frac{1}{2m}\Big)O((nlogn​)2m1​) to the eigenvalues and eigenfunctions of the weighted Laplace-Beltrami operator of MMM. No information on the submanifold MMM is needed in the construction of the graph or the "out-of-sample extension" of the eigenvectors. Of independent interest is a generalization of the rate of convergence of empirical measures on submanifolds in RdR^dRd in infinity transportation distance.

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