A Random Walks View of Spectral Segmentation
Workshop Paper, 8th International Workshop on Artificial Intelligence and Statistics (AISTATS '01), pp. 203 - 208, 2001
Abstract
We present a new view of clustering and segmentation by pairwise similarities. We interpret the similarities as edge flows in a Markov random walk and study the eigenvalues and eigenvectors of the walk’s transition matrix. This view shows that spectral methods for clustering and segmentation have a probabilistic foundation. We prove that the Normalized Cut method arises naturally from our framework and we provide a complete characterization of the cases when the Normalized Cut algorithm is exact. Then we discuss other spectral segmentation and clustering methods showing that several of them are essentially the same as NCut.
BibTeX
@workshop{Maila-2001-16800,author = {Marina Maila and Jianbo Shi},
title = {A Random Walks View of Spectral Segmentation},
booktitle = {Proceedings of 8th International Workshop on Artificial Intelligence and Statistics (AISTATS '01)},
year = {2001},
month = {January},
pages = {203 - 208},
}
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