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Bergm: Bayesian exponential random graph models in R
by
Caimo, Alberto
, Friel, Nial
in
Adequacy
/ Algorithms
/ Bayesian analysis
/ Computer simulation
/ Goodness of fit
/ Markov analysis
/ Markov chains
/ Monte Carlo simulation
/ Network analysis
/ Statistical inference
2017
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Do you wish to request the book?
Bergm: Bayesian exponential random graph models in R
by
Caimo, Alberto
, Friel, Nial
in
Adequacy
/ Algorithms
/ Bayesian analysis
/ Computer simulation
/ Goodness of fit
/ Markov analysis
/ Markov chains
/ Monte Carlo simulation
/ Network analysis
/ Statistical inference
2017
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Paper
Bergm: Bayesian exponential random graph models in R
2017
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Overview
The Bergm package provides a comprehensive framework for Bayesian inference using Markov chain Monte Carlo (MCMC) algorithms. It can also supply graphical Bayesian goodness-of-fit procedures that address the issue of model adequacy. The package is simple to use and represents an attractive way of analysing network data as it offers the advantage of a complete probabilistic treatment of uncertainty. Bergm is based on the ergm package and therefore it makes use of the same model set-up and network simulation algorithms. The Bergm package has been continually improved in terms of speed performance over the last years and now offers the end-user a feasible option for carrying out Bayesian inference for networks with several thousands of nodes.
Publisher
Cornell University Library, arXiv.org
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