Manifold learning in metric spaces
Applied and Computational Harmonic Analysis (ACHA), 2025
Main:32 Pages
6 Figures
Bibliography:4 Pages
Appendix:9 Pages
Abstract
Laplacian-based methods are popular for the dimensionality reduction of data lying in . Several theoretical results for these algorithms depend on the fact that the Euclidean distance locally approximates the geodesic distance on the underlying submanifold which the data are assumed to lie on. However, for some applications, other metrics, such as the Wasserstein distance, may provide a more appropriate notion of distance than the Euclidean distance. We provide a framework that generalizes the problem of manifold learning to metric spaces and study when a metric satisfies sufficient conditions for the pointwise convergence of the graph Laplacian.
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