We propose a first-order autoregressive (i.e. AR(1)) model for dynamic network processes in which edges change over time while nodes remain unchanged. The model depicts the dynamic changes explicitly. It also facilitates simple and efficient statistical inference methods including a permutation test for diagnostic checking for the fitted network models. The proposed model can be applied to the network processes with various underlying structures but with independent edges. As an illustration, an AR(1) stochastic block model has been investigated in depth, which characterizes the latent communities by the transition probabilities over time. This leads to a new and more effective spectral clustering algorithm for identifying the latent communities. We have derived a finite sample condition under which the perfect recovery of the community structure can be achieved by the newly defined spectral clustering algorithm. Furthermore the inference for a change point is incorporated into the AR(1) stochastic block model to cater for possible structure changes. We have derived the explicit error rates for the maximum likelihood estimator of the change-point. Application with three real data sets illustrates both relevance and usefulness of the proposed AR(1) models and the associate inference methods.
翻译:我们为动态网络进程提出了一个第一级自动递减(即AR(1))模式,在动态网络进程中,边缘随时间变化而变化,节点保持不变。模型明确描述动态变化。模型还有利于简单有效的统计推断方法,包括对适合的网络模型进行诊断性检查的变异测试;拟议的模型可以适用于具有各种基础结构但又具有独立边缘的网络进程。举例而言,对AR(1)随机区块模型进行了深入调查,该模型通过过渡概率对潜伏社区进行了长期变化的特征描述。这导致为确定潜在社区而采用了新的和更有效的光谱组合算法。我们得出了一个有限的样本条件,在这种条件下,通过新定义的光谱组群算算法可以实现社区结构的完美恢复。此外,变点的推论被纳入了AR(1)随机区块模型,以适应可能的结构变化。我们为变化点的最大可能性估计者得出了明确的误差率。三个实际数据集的应用说明了拟议的AR(1)模型的相关性和实用性。