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Title

Central limit theorems for local network statistics.

Authors

Maugis, P A

Abstract

Subgraph counts, in particular the number of occurrences of small shapes such as triangles, characterize properties of random networks. As a result, they have seen wide use as network summary statistics. Subgraphs are typically counted globally, making existing approaches unable to describe vertex-specific characteristics. In contrast, rooted subgraphs focus on vertex neighbourhoods, and are fundamental descriptors of local network properties. We derive the asymptotic joint distribution of rooted subgraph counts in inhomogeneous random graphs, a model that generalizes most statistical network models. This result enables a shift in the statistical analysis of graphs, from estimating network summaries to estimating models linking local network structure and vertex-specific covariates. As an example, we consider a school friendship network and show that gender and race are significant predictors of local friendship patterns.

Subjects

CENTRAL limit theorem; ASYMPTOTIC distribution; GRAPHIC methods in statistics; STATISTICS; RACE; RANDOM graphs

Publication

Biometrika, 2024, Vol 111, Issue 3, p743

ISSN

0006-3444

Publication type

Academic Journal

DOI

10.1093/biomet/asad080

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