Self-Tuning Spectral Clustering
Abstract
We study a number of open issues in spectral clustering: (i) Selecting the appropriate scale of analysis, (ii) Handling multi-scale data, (iii) Cluster- ing with irregular background clutter, and, (iv) Finding automatically the number of groups. We first propose that a ‘local’ scale should be used to compute the affinity between each pair of points. This local scaling leads to better clustering especially when the data includes multiple scales and when the clusters are placed within a cluttered background. We further suggest exploiting the structure of the eigenvectors to infer automatically the number of groups. This leads to a new algorithm in which the final randomly initialized k-means stage is eliminated.
Cite
Text
Zelnik-manor and Perona. "Self-Tuning Spectral Clustering." Neural Information Processing Systems, 2004.Markdown
[Zelnik-manor and Perona. "Self-Tuning Spectral Clustering." Neural Information Processing Systems, 2004.](https://mlanthology.org/neurips/2004/zelnikmanor2004neurips-selftuning/)BibTeX
@inproceedings{zelnikmanor2004neurips-selftuning,
title = {{Self-Tuning Spectral Clustering}},
author = {Zelnik-manor, Lihi and Perona, Pietro},
booktitle = {Neural Information Processing Systems},
year = {2004},
pages = {1601-1608},
url = {https://mlanthology.org/neurips/2004/zelnikmanor2004neurips-selftuning/}
}