Spectral Embedding Norm: Looking Deep into the Spectrum of the Graph Laplacian
DOI10.1137/18M1283160zbMath1456.62118arXiv1810.10695OpenAlexW3038624692WikidataQ111858270 ScholiaQ111858270MaRDI QIDQ5143283
Publication date: 11 January 2021
Published in: SIAM Journal on Imaging Sciences (Search for Journal in Brave)
Full work available at URL: https://arxiv.org/abs/1810.10695
Classification and discrimination; cluster analysis (statistical aspects) (62H30) Image analysis in multivariate analysis (62H35) Inference from stochastic processes and spectral analysis (62M15) Statistics of extreme values; tail inference (62G32) General topics in linear spectral theory for PDEs (35P05) Spectral problems; spectral geometry; scattering theory on manifolds (58J50) Laplace operator, Helmholtz equation (reduced wave equation), Poisson equation (35J05)
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