Understanding dramatic changes in the evolution of networks is central to statistical network inference, as underscored by recent challenges of predicting and distinguishing pandemic-induced transformations in organizational and communication networks. We consider a joint network model in which each node has an associated time-varying low-dimensional latent vector of feature data, and connection probabilities are functions of these vectors. Under mild assumptions, the time-varying evolution of the constellation of latent vectors exhibits low-dimensional manifold structure under a suitable notion of distance. This distance can be approximated by a measure of separation between the observed networks themselves, and there exist consistent Euclidean representations for underlying network structure, as characterized by this distance, at any given time. These Euclidean representations permit the visualization of network evolution and transform network inference questions such as change-point and anomaly detection into a classical setting. We illustrate our methodology with real and synthetic data, and identify change points corresponding to massive shifts in pandemic policies in a communication network of a large organization.
翻译:了解网络演变的急剧变化是统计网络推论的核心,最近预测和区分组织和通信网络中大流行病引起的变化的挑战突出表明了这一点。我们考虑一个联合网络模式,其中每个节点都有相关的低维地貌潜在矢量数据,连接概率是这些矢量的函数。在轻度假设下,潜在矢量星座的时间变化在适当的距离概念下呈现出低维的多元结构。这种距离可以通过观测到的网络本身之间的某种程度分离相近,而且无论何时,都存在以这种距离为特征的内在网络结构的一致的欧洲cliidean表示方式。这些Euclidean的表示方式使得网络演变的视觉化和将网络推论问题,如变化点和异常检测,转化为古典环境。我们用真实和合成数据来说明我们的方法,并找出一个大型组织的通信网络中与大流行病政策大规模变化相应的变化点。