Towards One Model for Classical Dimensionality Reduction: A
Probabilistic Perspective on UMAP and t-SNE
Main:6 Pages
3 Figures
Bibliography:2 Pages
Appendix:4 Pages
Abstract
This paper shows that the dimensionality reduction methods, UMAP and t-SNE, can be approximately recast as MAP inference methods corresponding to a generalized Wishart-based model introduced in ProbDR. This interpretation offers deeper theoretical insights into these algorithms, while introducing tools with which similar dimensionality reduction methods can be studied.
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