Graph-based methods have shown particular strengths in change-point detection (CPD) tasks for high-dimensional nonparametric settings. However, existing CPD research has rarely addressed data with repeated measurements or local group structures. A common treatment is to average repeated measurements, which can result in the loss of important within-individual information. In this paper, we propose a new graph-based method for detecting change-points in data with repeated measurements or local structures by incorporating both within-individual and between-individual information. Analytical approximations to the significance of the proposed statistics are derived, enabling efficient computation of p-values for the combined test statistic. The proposed method effectively detects change-points across a wide range of alternatives, particularly when within-individual differences are present. The new method is illustrated through an analysis of the New York City taxi dataset.
翻译:基于图的方法在高维非参数设置下的变点检测任务中展现出独特优势。然而,现有变点检测研究很少涉及具有重复测量或局部群组结构的数据。常见的处理方式是计算重复测量的平均值,这可能导致重要的个体内信息丢失。本文提出一种新的基于图的方法,通过整合个体内信息与个体间信息,检测具有重复测量或局部结构数据中的变点。我们推导了所提出统计量显著性的解析近似,从而能够高效计算组合检验统计量的p值。该方法能有效检测广泛替代假设下的变点,尤其在存在个体内差异时表现突出。通过对纽约市出租车数据集的分析,展示了新方法的实际应用效果。