A Pure Hypothesis Test for Inhomogeneous Random Graph Models Based on a Kernelised Stein Discrepancy
Machine Learning
2026-04-02 v3 Machine Learning
Statistics Theory
Statistics Theory
Abstract
Complex data are often represented as a graph, which in turn can often be viewed as a realisation of a random graph, such as an inhomogeneous random graph model (IRG). For general fast goodness-of-fit tests in high dimensions, kernelised Stein discrepancy (KSD) tests are a powerful tool. Here, we develop a KSD-type test for IRG models that can be carried out with a single observation of the network. The test applies to a network of any size, but is particularly interesting for small networks for which asymptotic tests are not warranted. We also provide theoretical guarantees.
Cite
@article{arxiv.2505.21580,
title = {A Pure Hypothesis Test for Inhomogeneous Random Graph Models Based on a Kernelised Stein Discrepancy},
author = {Anum Fatima and Gesine Reinert},
journal= {arXiv preprint arXiv:2505.21580},
year = {2026}
}
Comments
53 pages, 21 figures