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Variational Bayesian inference and complexity control for stochastic block models

机译:随机块模型的变分贝叶斯推理和复杂度控制

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It is now widely accepted that knowledge can be acquired from networks by clustering their vertices according to the connection profiles. Many methods have been proposed and in this paper we concentrate on the Stochastic Block Model (SBM). The clustering of vertices and the estimation of SBM model parameters have been subject to previous work, and numerous inference strategies such as variational expectation maximization (EM) and classification EM have been proposed. However, SBM still suffers from a lack of criteria to estimate the number of components in the mixture. To our knowledge, only one model-based criterion, Integrated Complete-data Likelihood (ICL), has been derived for SBM in the literature. It relies on an asymptotic approximation of the integrated complete-data likelihood and recent studies have shown that it tends to be too conservative in the case of small networks. To tackle this issue, we propose a new criterion that we call Integrated Likelihood Variational Bayes (ILvb), based on a non-asymptotic approximation of the marginal likelihood. We describe how the criterion can be computed through a variational Bayes EM algorithm.
机译:现在已被广泛接受,可以通过根据连接配置文件对网络的顶点进行聚类来从网络中获取知识。已经提出了许多方法,在本文中,我们将重点放在随机块模型(SBM)上。顶点的聚类和SBM模型参数的估计已经进行了先前的工作,并且提出了许多推断策略,例如变异期望最大化(EM)和分类EM。但是,SBM仍然缺乏评估混合物中组分数量的标准。据我们所知,文献中仅针对SBM得出了一个基于模型的标准,即集成完整数据似然度(ICL)。它依赖于完整完整数据似然的渐近逼近,最近的研究表明,在小型网络的情况下,它往往过于保守。为了解决这个问题,我们基于边际可能性的非渐近近似,提出了一个称为综合似然变异贝叶斯(ILvb)的新准则。我们描述了如何通过变分贝叶斯EM算法来计算标准。

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