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Empirical Bayes estimation for the stochastic blockmodel

机译:随机块模型的经验贝叶斯估计

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Inference for the stochastic blockmodel is currently of burgeoning interest in the statistical community, as well as in various application domains as diverse as social networks, citation networks, brain connectivity networks (connectomics), etc. Recent theoretical developments have shown that spectral embedding of graphs yields tractable distributional results; in particular, a random dot product latent position graph formulation of the stochastic blockmodel informs a mixture of normal distributions for the adjacency spectral embedding. We employ this new theory to provide an empirical Bayes methodology for estimation of block memberships of vertices in a random graph drawn from the stochastic blockmodel, and demonstrate its practical utility. The posterior inference is conducted using a Metropolis-within-Gibbs algorithm. The theory and methods are illustrated through Monte Carlo simulation studies, both within the stochastic blockmodel and beyond, and experimental results on a Wikipedia graph are presented.
机译:当前,在统计界以及社会网络,引文网络,大脑连通性网络(连接组学)等各种应用领域中,对随机块模型的推理正在迅速兴起。近期的理论发展表明,图的频谱嵌入产生易于处理的分配结果;特别地,随机块模型的随机点积潜在位置图公式为邻接光谱嵌入提供了正态分布的混合。我们采用这一新理论来提供经验贝叶斯方法,以估计随机块模型中的随机图中顶点的块成员,并证明其实际实用性。后推断是使用Metropolis-in-Gibbs算法进行的。通过蒙特卡罗模拟研究对理论和方法进行了说明,包括在随机块模型内以及在其外,并在Wikipedia图上显示了实验结果。

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