Efficient Bayesian inference for exponential random graph models by correcting the pseudo-posterior distributionOpen Website

2017 (modified: 01 Jun 2020)Soc. Networks 2017Readers: Everyone
Abstract: Highlights • The ERG likelihood is approximated by a pseudolikelihood function. • Such an approximation results in flawed Bayesian inference. • Our methodology calibrates the resulting approximate pseudo-posterior distribution. • The procedure outperforms the approximate exchange algorithm ( Caimo and Friel, 2011 ). • Our methodology scales well to realistic-sized problems. Abstract Exponential random graph models are an important tool in the statistical analysis of data. However, Bayesian parameter estimation for these models is extremely challenging, since evaluation of the posterior distribution typically involves the calculation of an intractable normalizing constant. This barrier motivates the consideration of tractable approximations to the likelihood function, such as the pseudolikelihood function, which offers an approach to constructing such an approximation. Naive implementation of what we term a pseudo-posterior resulting from replacing the likelihood function in the posterior distribution by the pseudolikelihood is likely to give misleading inferences. We provide practical guidelines to correct a sample from such a pseudo-posterior distribution so that it is approximately distributed from the target posterior distribution and discuss the computational and statistical efficiency that result from this approach. We illustrate our methodology through the analysis of real-world graphs. Comparisons against the approximate exchange algorithm of Caimo and Friel (2011) are provided, followed by concluding remarks. Previous article in issue Next article in issue
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