Diffusion Maps, Spectral Clustering and Eigenfunctions of Fokker-Planck Operators

Nadler, Boaz, Lafon, Stephane, Kevrekidis, Ioannis, Coifman, Ronald R.

Neural Information Processing Systems 

This paper presents a diffusion based probabilistic interpretation of spectral clustering and dimensionality reduction algorithms that use the eigenvectors of the normalized graph Laplacian. Given the pairwise adjacency matrix of all points, we define a diffusion distance between any two data points and show that the low dimensional representation of the data by the first few eigenvectors of the corresponding Markov matrix is optimal under a certain mean squared error criterion.

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