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 spectral clustering and eigenfunction


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

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. Furthermore, assuming that data points are random samples from a density p(x) e-U (x) we identify these eigenvectors as discrete approximations of eigenfunctions of a Fokker-Planck operator in a potential 2U (x) with reflecting boundary conditions. Finally, applying known results regarding the eigenvalues and eigenfunctions of the continuous Fokker-Planck operator, we provide a mathematical justification for the success of spectral clustering and dimensional reduction algorithms based on these first few eigenvectors. This analysis elucidates, in terms of the characteristics of diffusion processes, many empirical findings regarding spectral clustering algorithms.


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.


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.


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 matrixof 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 undera certain mean squared error criterion.