Journal article
Central limit theorems in the configuration model
AD Barbour, A Röllin
Annals of Applied Probability | INST MATHEMATICAL STATISTICS-IMS | Published : 2019
DOI: 10.1214/18-AAP1425
Abstract
We prove a general normal approximation theorem for local graph statistics in the configuration model, together with an explicit bound on the error in the approximation with respect to the Wasserstein metric. Such statistics take the form T :=v∈V Hv, where V is the vertex set, and Hv depends on a neighbourhood in the graph around v of size at most . The error bound is expressed in terms of , |V|, an almost sure bound on Hv, the maximum vertex degree dmax and the variance of T. Under suitable assumptions on the convergence of the empirical degree distributions to a limiting distribution, we deduce that the size of the giant component in the configuration model has asymptotically Gaussian fluc..
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Grants
Awarded by Australian Research Council
Funding Acknowledgements
Supported in part by Australian Research Council Grants Nos. DP120102728, DP120102398, DP150101459 and DP150103588, and by their Centre of Excellence for Mathematical and Statistical Frontiers. Supported in part by NUS Research Grant R-155-000-167-112.