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Statistical Limits for Testing Correlation of Hypergraphs

Abstract

In this paper, we consider the hypothesis testing of correlation between two mm-uniform hypergraphs on nn unlabelled nodes. Under the null hypothesis, the hypergraphs are independent, while under the alternative hypothesis, the hyperdges have the same marginal distributions as in the null hypothesis but are correlated after some unknown node permutation. We focus on two scenarios: the hypergraphs are generated from the Gaussian-Wigner model and the dense Erd\"{o}s-R\'{e}nyi model. We derive the sharp information-theoretic testing threshold. Above the threshold, there exists a powerful test to distinguish the alternative hypothesis from the null hypothesis. Below the threshold, the alternative hypothesis and the null hypothesis are not distinguishable. The threshold involves mm and decreases as mm gets larger. This indicates testing correlation of hypergraphs (m3m\geq3) becomes easier than testing correlation of graphs (m=2m=2)

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