We consider the problem of detecting whether a power-law inhomogeneous random graph contains a geometric community, and we frame this as a hypothesis-testing problem. More precisely, we assume that we are given a sample from an unknown distribution on the space of graphs on n vertices. Under the null hypothesis, the sample originates from the inhomogeneous random graph with a heavy-tailed degree sequence. Under the alternative hypothesis, $k=o(n)$ vertices are given spatial locations and connect following the geometric inhomogeneous random graph connection rule. The remaining $n-k$ vertices follow the inhomogeneous random graph connection rule. We propose a simple and efficient test based on counting normalized triangles to differentiate between the two hypotheses. We prove that our test correctly detects the presence of the community with high probability as $n\to\infty$ , and identifies large-degree vertices of the community with high probability.
Localized geometry detection in scale-free random graphs / Bet, Gianmarco; Michielan, Riccardo; Stegehuis, Clara. - In: JOURNAL OF APPLIED PROBABILITY. - ISSN 0021-9002. - ELETTRONICO. - (2025), pp. 1-17. [10.1017/jpr.2025.10038]
Localized geometry detection in scale-free random graphs
Bet, Gianmarco;
2025
Abstract
We consider the problem of detecting whether a power-law inhomogeneous random graph contains a geometric community, and we frame this as a hypothesis-testing problem. More precisely, we assume that we are given a sample from an unknown distribution on the space of graphs on n vertices. Under the null hypothesis, the sample originates from the inhomogeneous random graph with a heavy-tailed degree sequence. Under the alternative hypothesis, $k=o(n)$ vertices are given spatial locations and connect following the geometric inhomogeneous random graph connection rule. The remaining $n-k$ vertices follow the inhomogeneous random graph connection rule. We propose a simple and efficient test based on counting normalized triangles to differentiate between the two hypotheses. We prove that our test correctly detects the presence of the community with high probability as $n\to\infty$ , and identifies large-degree vertices of the community with high probability.| File | Dimensione | Formato | |
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localized-geometry-detection-in-scale-free-random-graphs.pdf
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2303.02965v1.pdf
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Descrizione: ArXiv
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1.16 MB | Adobe PDF |
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