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Approximate Bayesian Computation for Exponential Random Graph Models for Large Social Networks

机译:大型社交网络指数随机图模型的近似贝叶斯计算

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摘要

We consider the issue of sampling from the posterior distribution of exponential random graph (ERG) models and other statistical models with intractable normalizing constants. Existing methods based on exact sampling are either infeasible or require very long computing time. We study a class of approximate Markov chain Monte Carlo (MCMC) sampling schemes that deal with this issue. We also develop a new Metropolis-Hastings kernel to sample sparse large networks from ERG models. We illustrate the proposed methods on several examples.
机译:我们考虑从指数随机图(ERG)模型和其他具有难于归一化常数的统计模型的后验分布中采样的问题。基于精确采样的现有方法不可行或需要非常长的计算时间。我们研究了一类解决此问题的近似马尔可夫链蒙特卡洛(MCMC)采样方案。我们还开发了一个新的Metropolis-Hastings内核,以从ERG模型中采样稀疏的大型网络。我们通过几个示例来说明所提出的方法。

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