Asymptotic Analysis of Statistical Estimators related to MultiGraphex Processes under Misspecification
Bernoulli 30(4): 2644-2675, 2024 This article studies the asymptotic properties of Bayesian or frequentist estimators of a vector of parameters related to structural properties of sequences of graphs. The estimators studied originate from a particular class of graphex model introduced by Caron and F...
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Main Authors | , , |
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Format | Journal Article |
Language | English |
Published |
02.07.2021
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Subjects | |
Online Access | Get full text |
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Summary: | Bernoulli 30(4): 2644-2675, 2024 This article studies the asymptotic properties of Bayesian or frequentist
estimators of a vector of parameters related to structural properties of
sequences of graphs. The estimators studied originate from a particular class
of graphex model introduced by Caron and Fox. The analysis is however performed
here under very weak assumptions on the underlying data generating process,
which may be different from the model of Caron and Fox or from a graphex model.
In particular, we consider generic sparse graph models, with unbounded degree,
whose degree distribution satisfies some assumptions. We show that one can
relate the limit of the estimator of one of the parameters to the sparsity
constant of the true graph generating process. When taking a Bayesian approach,
we also show that the posterior distribution is asymptotically normal. We
discuss situations where classical random graphs models such as configuration
models, sparse graphon models, edge exchangeable models or graphon processes
satisfy our assumptions. |
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DOI: | 10.48550/arxiv.2107.01120 |