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Bayesian Model Selection for Exponential Random Graph Models via Adjusted Pseudolikelihoods
Author(s)
Date Issued
2018-06-11
Date Available
2019-05-13T09:29:48Z
Abstract
Models with intractable likelihood functions arise in areas including network analysisand spatial statistics, especially those involving Gibbs random fields. Posterior parameter estimationin these settings is termed a doubly-intractable problem because both the likelihoodfunction and the posterior distribution are intractable. The comparison of Bayesian models isoften based on the statistical evidence, the integral of the un-normalised posterior distributionover the model parameters which is rarely available in closed form. For doubly-intractablemodels, estimating the evidence adds another layer of difficulty. Consequently, the selectionof the model that best describes an observed network among a collection of exponentialrandom graph models for network analysis is a daunting task. Pseudolikelihoods offer atractable approximation to the likelihood but should be treated with caution because they canlead to an unreasonable inference. This paper specifies a method to adjust pseudolikelihoodsin order to obtain a reasonable, yet tractable, approximation to the likelihood. This allowsimplementation of widely used computational methods for evidence estimation and pursuitof Bayesian model selection of exponential random graph models for the analysis of socialnetworks. Empirical comparisons to existing methods show that our procedure yields similarevidence estimates, but at a lower computational cost.
Sponsorship
Science Foundation Ireland
Other Sponsorship
Insight Centre for Data Analytics
Type of Material
Journal Article
Publisher
Taylor & Francis
Journal
Journal of Computational and Graphical Statistics
Volume
27
Issue
3
Start Page
516
End Page
528
Language
English
Status of Item
Peer reviewed
This item is made available under a Creative Commons License
File(s)
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Name
insight_publication.pdf
Size
632.78 KB
Format
Adobe PDF
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