There is a growing literature on the statistical analysis of multiple networks in which the network is the fundamental data object. However, most of this work requires networks on a shared set of labeled vertices. In this work, we consider the question of recovering a parent network based on noisy unlabeled samples. We identify a specific regime in the noisy network literature for recovery that is asymptotically unbiased and computationally tractable based on a three-stage recovery procedure: first, we align the networks via a sequential pairwise graph matching procedure; next, we compute the sample average of the aligned networks; finally, we obtain an estimate of the parent by thresholding the sample average. Previous work on multiple unlabeled networks is only possible for trivial networks due to the complexity of brute-force computations.
翻译:在对以网络为基本数据对象的多个网络进行统计分析方面,文献文献越来越多,然而,这项工作大多需要用一组共同标签的脊椎建立网络。在这项工作中,我们考虑的是恢复基于噪音无标签样本的母体网络的问题。我们在吵闹的网络文献中确定了一种基于三阶段恢复程序的非现时公正和可计算性回收的具体机制:首先,我们通过相继对齐图匹配程序对网络进行对齐;其次,我们计算了匹配网络的样本平均数;最后,我们通过设定样本平均值来估计母体;由于粗体计算的复杂性,以前对多个无标签网络的工作只能对微不足道的网络进行。