| Literature DB >> 24653788 |
Ick Hoon Jin1, Ying Yuan1, Faming Liang2.
Abstract
Exponential random graph models have been widely used in social network analysis. However, these models are extremely difficult to handle from a statistical viewpoint, because of the intractable normalizing constant and model degeneracy. In this paper, we consider a fully Bayesian analysis for exponential random graph models using the adaptive exchange sampler, which solves the intractable normalizing constant and model degeneracy issues encountered in Markov chain Monte Carlo (MCMC) simulations. The adaptive exchange sampler can be viewed as a MCMC extension of the exchange algorithm, and it generates auxiliary networks via an importance sampling procedure from an auxiliary Markov chain running in parallel. The convergence of this algorithm is established under mild conditions. The adaptive exchange sampler is illustrated using a few social networks, including the Florentine business network, molecule synthetic network, and dolphins network. The results indicate that the adaptive exchange algorithm can produce more accurate estimates than approximate exchange algorithms, while maintaining the same computational efficiency.Entities:
Keywords: Adaptive Markov chain Monte Carlo; Exchange Algorithm; Exponential Random Graph Model; Social Network
Year: 2013 PMID: 24653788 PMCID: PMC3956133 DOI: 10.4310/SII.2013.v6.n4.a13
Source DB: PubMed Journal: Stat Interface ISSN: 1938-7989 Impact factor: 0.582