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arxiv: 1309.5936 · v1 · pith:56FGKKZYnew · submitted 2013-09-23 · 🧮 math.ST · math.CO· math.PR· stat.TH

Nonparametric graphon estimation

classification 🧮 math.ST math.COmath.PRstat.TH
keywords estimationgraphonnonparametricnetworksresultssparsetheoryunder
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We propose a nonparametric framework for the analysis of networks, based on a natural limit object termed a graphon. We prove consistency of graphon estimation under general conditions, giving rates which include the important practical setting of sparse networks. Our results cover dense and sparse stochastic blockmodels with a growing number of classes, under model misspecification. We use profile likelihood methods, and connect our results to approximation theory, nonparametric function estimation, and the theory of graph limits.

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