On Laplacian Eigenmaps for Dimensionality Reduction - Juan Orduz





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Published on Aug 1, 2018

PyData Berlin 2018

The aim of this talk is to describe the non-linear dimensionality reduction algorithm based on spectral techniques introduced in \cite{BN2003}. This approach has its foundation on the spectral analysis of graph Laplacian. The motivation of the construction comes from the role of the continuous limit, the Laplace-Beltrami operator, in providing an optimal embedding for manifolds.

Slides: https://juanitorduz.github.io/documen...

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