Many two-sample network hypothesis testing methodologies operate under the implicit assumption that the vertex correspondence across networks is a priori known. In this paper, we consider the degradation of power in two-sample graph hypothesis testing when there are misaligned/label-shuffled vertices across networks. In the context of stochastic block model networks, we theoretically explore the power loss due to shuffling for a pair of hypothesis tests based on Frobenius norm differences between estimated edge probability matrices or between adjacency matrices. The loss in testing power is further reinforced by numerous simulations and experiments, both in the stochastic block model and in the random dot product graph model, where we compare the power loss across multiple recently proposed tests in the literature. Lastly, we demonstrate the impact that shuffling can have in real-data testing in a pair of examples from neuroscience and from social network analysis.
翻译:许多双模网络假设测试方法在隐含的假设下运作,即跨网络的顶端通信是先验已知的。在本文中,当跨网络的双模图假设测试出现错配/标签擦拭的脊椎时,我们考虑在双模图假设测试中出现权力的退化。在随机区块模型网络中,我们理论上探索了根据弗罗贝尼乌斯估计边缘概率矩阵之间或相邻矩阵之间的常规差异进行一对假设测试而导致的能量损失。测试力的丧失通过无数的模拟和实验得到进一步的加强,这些模拟和实验是在随机点点产品图模型中进行的,我们比较了文献中最近提出的多项测试的功率损失。最后,我们用神经科学和社会网络分析的一对一实例,展示了在真实数据测试中进行洗动可能产生的影响。