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A central limit theorem in the βββ-model for undirected random graphs with a diverging number of vertices

15 February 2012
T. Yan
Jinfeng Xu
ArXiv (abs)PDFHTML
Abstract

Chatterjee, Diaconis and Sly (2011) recently established the consistency of the maximum likelihood estimate in the β\betaβ-model when the number of vertices goes to infinity. By approximating the inverse of the Fisher information matrix, we obtain its asymptotic normality under mild conditions. Simulation studies and a data example illustrate the theoretical results.

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