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

Author:

Karwa Vishesh1,Pati Debdeep2,Petrović Sonja3,Solus Liam4,Alexeev Nikita5ORCID,Raič Mateja6,Wilburne Dane7,Williams Robert8,Yan Bowei9

Affiliation:

1. Department of Statistics, Operations and Data Science,Temple University , Philadelphia , USA

2. Department of Statistics, Texas A & M University , College Station , USA

3. Department of Applied Mathematics, Illinois Institute of Technology , Chicago , USA

4. Department of Mathematics, KTH Royal Institute of Technology, Stockholm , Sweden

5. Independent Researcher , Tel Aviv , Israel

6. Department of Mathematics, Statistics, and Computer Science, University of Illinois at Chicago , Illinois , USA

7. Lead Applied Mathematician, Mitre Corporation , McLean, Virginia , USA

8. Department of Mathematics, Rose-Hulman Institute of Technology , Terre Haute, Indiana , USA

9. Quantitative Researcher, Citadel , Chicago , USA

Abstract

AbstractWe 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.

Funder

National Science Foundation

AFOSR

DOE

Simons Foundation

Office of Naval Research

Publisher

Oxford University Press (OUP)

Subject

Statistics, Probability and Uncertainty,Statistics and Probability

Reference64 articles.

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2. Pseudo-likelihood methods for community detection in large sparse networks;Amini;The Annals of Statistics,2013

3. Markov Bases in Algebraic Statistics

4. Information and Exponential Families

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