Sequential change-point detection for graphs is a fundamental problem for streaming network data types and has wide applications in social networks and power systems. Given fixed vertices and a sequence of random graphs, the objective is to detect the change-point where the underlying distribution of the random graph changes. In particular, we focus on the local change that only affects a subgraph. We adopt the classical Erdos-Renyi model and revisit the generalized likelihood ratio (GLR) detection procedure. The scan statistic is computed by sequentially estimating the most-likely subgraph where the change happens. We provide theoretical analysis for the asymptotic optimality of the proposed procedure based on the GLR framework. We demonstrate the efficiency of our detection algorithm using simulations.
翻译:图表的序列变化点检测是流流网络数据类型的一个基本问题,在社交网络和动力系统中具有广泛的应用。考虑到固定的脊椎和随机图序列,目标是检测随机图变化的基本分布所在的变化点。特别是,我们侧重于只影响子图的局部变化。我们采用了古典Erdos-Renyi模型,并重新审视了普遍概率比(GLR)检测程序。扫描统计是通过按顺序估计变化发生地点最可能发生的子图来计算的。我们为基于GLR框架的拟议程序的无现时最佳性提供了理论分析。我们用模拟来展示我们的检测算法的效率。