A central limit theorem for scaled eigenvectors of random dot product graphs
classification
🧮 math.ST
stat.MLstat.TH
keywords
randomcentrallatentlimitpositionstheoremadjacencyeigenvectors
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We prove a central limit theorem for the components of the largest eigenvectors of the adjacency matrix of a finite-dimensional random dot product graph whose true latent positions are unknown. In particular, we follow the methodology outlined in \citet{sussman2012universally} to construct consistent estimates for the latent positions, and we show that the appropriately scaled differences between the estimated and true latent positions converge to a mixture of Gaussian random variables. As a corollary, we obtain a central limit theorem for the first eigenvector of the adjacency matrix of an Erd\"os-Renyi random graph.
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