UMAP: Uniform Manifold Approximation and Projection for Dimension Reduction (original) (raw)

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Estimating the Dimension of a Manifold and finding local charts on it by using Nonlinear Singular Value Decomposition, Prabhakar G. Vaidya and Sajini Anand P S, Topology Proceedings, Vol. 43 (2014) pp. 1–15. ISSN: 0146-4124 (Print version), ISSN: 2331-1290 (electronic version).

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