A statistical test for network similarity
Abstract
In this article, we revisit and expand our prior work on graph similarity. As with our earlier work, we focus on a view of similarity which does not require node correspondence between graphs under comparison. Our work is suited to the temporal study of networks, change-point and anomaly detection and simple comparisons of static graphs. It provides a similarity metric for the study of (weakly) connected graphs. Our work proposes a metric designed to compare networks and assess the (dis)similarity between them. For example, given three different graphs with possibly different numbers of nodes, , and , we aim to answer two questions: a) "How different is from ?" and b) "Is graph more similar to or to ?". We illustrate the value of our test and its accuracy through several new experiments, using synthetic and real-world graphs.
Cite
@article{arxiv.2508.14399,
title = {A statistical test for network similarity},
author = {Pierre Miasnikof and Alexander Y. Shetopaloff},
journal= {arXiv preprint arXiv:2508.14399},
year = {2025}
}
Comments
23 pages, 16 tables, 5 figures