High-dimensional changepoint inference that adapts to various change patterns has received much attention recently. We propose a simple, fast yet effective approach for adaptive changepoint testing. The key observation is that two statistics based on aggregating cumulative sum statistics over all dimensions and possible changepoints by taking their maximum and summation, respectively, are asymptotically independent under some mild conditions. Hence we are able to form a new test by combining the p-values of the maximum- and summation-type statistics according to their limit null distributions. To this end, we develop new tools and techniques to establish asymptotic distribution of the maximum-type statistic under a more relaxed condition on componentwise correlations among all variables than that in existing literature. The proposed method is simple to use and computationally efficient. It is adaptive to different sparsity levels of change signals, and is comparable to or even outperforms existing approaches as revealed by our numerical studies.
翻译:适应各种变化模式的高维变化点推论最近引起了人们的极大关注。 我们提出了一种简单、快速而有效的适应变化点测试方法。 关键观察是,基于将所有层面和可能变化点的累积总和统计数据汇总起来的两种统计数据,分别采用其最大和总和,在某些温和条件下,这些统计数据是微不足道的。 因此,我们能够通过将最大和总和类型统计数据的P值根据其无效分布的限度加以合并来形成一种新的测试。 为此,我们开发了新的工具和技术,以便在比现有文献中所有变量的构成部分相关性更加宽松的条件下,在无症状的情况下,确定最大类型统计数据的无症状分布。 拟议的方法简单易用,而且计算效率高。 这种方法适应变化信号的不同宽度水平,并且与我们的数字研究所揭示的现有方法相类似,甚至优于现有方法。