Template-Based Graph Clustering
Machine Learning
2021-07-06 v1 Machine Learning
Social and Information Networks
Abstract
We propose a novel graph clustering method guided by additional information on the underlying structure of the clusters (or communities). The problem is formulated as the matching of a graph to a template with smaller dimension, hence matching vertices of the observed graph (to be clustered) to the vertices of a template graph, using its edges as support information, and relaxed on the set of orthonormal matrices in order to find a dimensional embedding. With relevant priors that encode the density of the clusters and their relationships, our method outperforms classical methods, especially for challenging cases.
Cite
@article{arxiv.2107.01994,
title = {Template-Based Graph Clustering},
author = {Mateus Riva and Florian Yger and Pietro Gori and Roberto M. Cesar and Isabelle Bloch},
journal= {arXiv preprint arXiv:2107.01994},
year = {2021}
}
Comments
ECML-PKDD, Workshop on Graph Embedding and Minin (GEM) 2020