We introduce two new bootstraps for exchangeable random graphs. One, the "empirical graphon bootstrap", is based purely on resampling, while the other, the "histogram bootstrap", is a model-based "sieve" bootstrap. We show that both of them accurately approximate the sampling distributions of motif densities, i.e., of the normalized counts of the number of times fixed subgraphs appear in the network. These densities characterize the distribution of (infinite) exchangeable networks. Our bootstraps therefore give a valid quantification of uncertainty in inferences about fundamental network statistics, and so of parameters identifiable from them.
翻译:我们为可交换的随机图表引入了两个新的靴子。一,“经验型石墨靴子”纯粹基于重新取样,而另一,“历史型靴子”则基于模型的“隐蔽”靴子。我们显示,它们都精确地接近了分子密度的抽样分布,即网络中固定子图出现次数的正常计数。这些密度是(无限)可交换网络分布的特点。因此,我们的靴子装置对基本网络统计以及从中可以识别的参数的不确定性进行了有效的量化。