The application of network analysis has found great success in a wide variety of disciplines; however, the popularity of these approaches has revealed the difficulty in handling networks whose complexity scales rapidly. One of the main interests in network analysis is the online detection of anomalous behaviour. To overcome the curse of dimensionality, we introduce a network surveillance method bringing together network modelling and statistical process control. Our approach is to apply multivariate control charts based on exponential smoothing and cumulative sums in order to monitor networks determined by temporal exponential random graph models (TERGM). This allows us to account for temporal dependence, while simultaneously reducing the number of parameters to be monitored. The performance of the proposed charts is evaluated by calculating the average run length for both simulated and real data. To prove the appropriateness of the TERGM to describe network data, some measures of goodness of fit are inspected. We demonstrate the effectiveness of the proposed approach by an empirical application, monitoring daily flights in the United States to detect anomalous patterns.
翻译:网络分析的应用在各种各样的学科中都取得了巨大成功;然而,这些方法的普及程度表明,处理复杂规模迅速的网络很困难。网络分析的主要利益之一是在线检测异常行为。为了克服维度的诅咒,我们采用了网络监视方法,将网络建模和统计过程控制结合起来。我们的方法是以指数平滑和累积金额为基础的多变量控制图表,以监测由时间指数随机图模型(TERGM)决定的网络。这使我们能够计算时间依赖性,同时减少需要监测的参数数量。拟议的图表的性能通过计算模拟数据和真实数据的平均运行时间来评估。为了证明TERGM描述网络数据的适宜性,我们检查了一些适合性的措施。我们通过经验应用,对美国日常飞行进行监测,以探测异常模式,我们展示了拟议方法的有效性。