A Unified Framework for Spectral Clustering in Sparse Graphs
Abstract
This article considers spectral community detection in the regime of sparse networks with heterogeneous degree distributions, for which we devise an algorithm to efficiently retrieve communities. Specifically, we demonstrate that a well parametrized form of regularized Laplacian matrices can be used to perform spectral clustering in sparse networks without suffering from its degree heterogeneity. Besides, we exhibit important connections between this proposed matrix and the now popular non-backtracking matrix, the Bethe-Hessian matrix, as well as the standard Laplacian matrix. Interestingly, as opposed to competitive methods, our proposed improved parametrization inherently accounts for the hardness of the classification problem. These findings are summarized under the form of an algorithm capable of both estimating the number of communities and achieving high-quality community reconstruction.
Cite
Text
Dall'Amico et al. "A Unified Framework for Spectral Clustering in Sparse Graphs." Journal of Machine Learning Research, 2021.Markdown
[Dall'Amico et al. "A Unified Framework for Spectral Clustering in Sparse Graphs." Journal of Machine Learning Research, 2021.](https://mlanthology.org/jmlr/2021/dallamico2021jmlr-unified/)BibTeX
@article{dallamico2021jmlr-unified,
title = {{A Unified Framework for Spectral Clustering in Sparse Graphs}},
author = {Dall'Amico, Lorenzo and Couillet, Romain and Tremblay, Nicolas},
journal = {Journal of Machine Learning Research},
year = {2021},
pages = {1-56},
volume = {22},
url = {https://mlanthology.org/jmlr/2021/dallamico2021jmlr-unified/}
}