Network Hypothesis Testing Using Mixed Kronecker Product Graph Models

Sebastián Moreno, Jennifer Neville
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引用次数: 39

Abstract

The recent interest in networks-social, physical, communication, information, etc.-has fueled a great deal of research on the analysis and modeling of graphs. However, many of the analyses have focused on a single large network (e.g., a sub network sampled from Facebook). Although several studies have compared networks from different domains or samples, they largely focus on empirical exploration of network similarities rather than explicit tests of hypotheses. This is in part due to a lack of statistical methods to determine whether two large networks are likely to have been drawn from the same underlying graph distribution. Research on across-network hypothesis testing methods has been limited by (i) difficulties associated with obtaining a set of networks to reason about the underlying graph distribution, and (ii) limitations of current statistical models of graphs that make it difficult to represent variations across networks. In this paper, we exploit the recent development of mixed-Kronecker Product Graph Models, which accurately capture the natural variation in real world graphs, to develop a model-based approach for hypothesis testing in networks.
混合Kronecker积图模型的网络假设检验
最近对网络的兴趣——社交、物理、通信、信息等——推动了大量关于图的分析和建模的研究。然而,许多分析都集中在单个大型网络上(例如,从Facebook采样的子网络)。虽然有一些研究比较了来自不同领域或样本的网络,但它们主要集中在网络相似性的实证探索上,而不是对假设的明确检验。这部分是由于缺乏统计方法来确定两个大型网络是否可能是从相同的底层图分布中绘制的。跨网络假设检验方法的研究受到以下因素的限制:(i)难以获得一组网络来推断潜在的图分布,以及(ii)当前图的统计模型的局限性使得难以表示跨网络的变化。在本文中,我们利用混合kronecker产品图模型的最新发展,它准确地捕捉了现实世界图中的自然变化,以开发一种基于模型的方法来进行网络中的假设检验。
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