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Hurdle Blockmodels for Sparse Network Modeling

机译:用于稀疏网络建模的障碍块模型

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摘要

A variety of random graph models have been proposed in the literature to model the associations within an interconnected system and to realistically account for various structures and attributes of such systems. In particular, much research has been devoted to modeling the interaction of humans within social networks. However, such networks in real-life tend to be extremely sparse and existing methods do not adequately address this issue. In this article, we propose an extension to ordinary and degree corrected stochastic blockmodels that accounts for a high degree of sparsity. Specifically, we propose hurdle versions of these blockmodels to account for community structure and degree heterogeneity in sparse networks. We use simulation to ensure parameter estimation is consistent and precise, and we propose the use of likelihood ratio-type tests for model selection. We illustrate the necessity for hurdle blockmodels with a small research collaboration network as well as the infamous Enron E-mail exchange network. Methods for determining goodness of fit and performing model selection are also proposed. for this article are available online.
机译:在文献中提出了各种随机图模型,以模拟互连系统内的关联,并在现实地解释这种系统的各种结构和属性。特别是,很多研究已经致力于建模人类在社交网络中的互动。然而,这种在现实生活中的网络往往是极其稀疏的,现有方法没有充分解决这个问题。在本文中,我们提出了普通和程度纠正的随机块显示的延伸,占高度稀疏性。具体而言,我们提出了这些块的障碍版本,以解释稀疏网络中的社区结构和程度异质性。我们使用仿真来确保参数估计是一致的,精确的,我们提出了使用似然比型测试进行模型选择。我们说明了具有小型研究协作网络以及臭名昭着的安斯通电子邮件交换网络的障碍块模型的必要性。还提出了确定拟合良好和表演模型选择的方法。本文可在线获取。

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