The stochastic block model is widely used for detecting community structures in network data. However, the research interest of many literatures focuses on the study of one sample of stochastic block models. How to detect the difference of the community structures is a less studied issue for stochastic block models. In this article, we propose a novel test statistic based on the largest singular value of a residual matrix obtained by subtracting the geometric mean of two estimated block mean effects from the sum of two observed adjacency matrices. We prove that the null distribution of the proposed test statistic converges in distribution to a Tracy--Widom distribution with index 1, and we show the difference of the two samples for stochastic block models can be tested via the proposed method. Further, we show that the proposed test has asymptotic power guarantee against alternative models. Both simulation studies and real-world data examples indicate that the proposed method works well.
翻译:在网络数据中发现社区结构时,广泛使用随机区块模型,然而,许多文献的研究兴趣集中在研究一个随机区块模型样本上。如何发现社区结构的差异对于随机区块模型来说是一个研究较少的问题。在本条中,我们建议根据从两个观测的相邻基体之和中减去两种估计区块平均效应的几何平均值得出的残余矩阵的最大单值进行新的测试统计。我们证明,拟议的试验统计数据的无效分布在分布到附着指数1的Tracis-Widom分布中,我们显示了可采用拟议方法测试的两种随机区块模型的区别。此外,我们表明,拟议的试验对替代模型具有无药力保证。模拟研究和真实世界数据实例都表明,拟议的方法效果良好。