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Monte Carlo goodness-of-fit tests for degree corrected and related stochastic blockmodels

Authors :
Karwa, Vishesh
Pati, Debdeep
Petrović, Sonja
Solus, Liam
Alexeev, Nikita
Raič, Mateja
Wilburne, Dane
Williams, Robert
Yan, Bowei
Karwa, Vishesh
Pati, Debdeep
Petrović, Sonja
Solus, Liam
Alexeev, Nikita
Raič, Mateja
Wilburne, Dane
Williams, Robert
Yan, Bowei
Publication Year :
2024

Abstract

We construct Bayesian and frequentist finite-sample goodness-of-fit tests for three different variants of the stochastic blockmodel for network data. Since all of the stochastic blockmodel variants are log-linear in form when block assignments are known, the tests for the latent block model versions combine a block membership estimator with the algebraic statistics machinery for testing goodness-of-fit in log-linear models. We describe Markov bases and marginal polytopes of the variants of the stochastic blockmodel and discuss how both facilitate the development of goodness-of-fit tests and understanding of model behaviour. The general testing methodology developed here extends to any finite mixture of log-linear models on discrete data, and as such is the first application of the algebraic statistics machinery for latent-variable models.<br />QC 20240222

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1428117427
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1093.jrsssb.qkad084