论文标题

功能协方差的突破点检测

Break Point Detection for Functional Covariance

论文作者

Jiao, Shuhao, Frostig, Ron D., Ombao, Hernando

论文摘要

许多实验记录了顺序轨迹,其中每个轨迹都由振荡和波动组成零。这些轨迹可以看作是零均值的功能数据。当有结构性断裂(在轨迹的顺序上)时,仅通过视觉检查就可以发现它们并不总是那么容易。在大脑信号分析中,由于这个具有挑战性的问题,我们提出了一个检测和测试程序,以找到功能协方差的变化点。检测程序基于累积总和统计(CUSUM)。功能数据的经典测试过程取决于无限许多未知参数的零分布,尽管实际上只能将其中的有限数包括在于变更点的存在的假设测试。本文提供了一些有关参数数量影响的理论见解。同时,开发了估计变化点的渐近性能。该方法的有效性在模拟研究中得到了数值验证,以及在实验诱导的中风后研究大鼠脑信号的变化的应用。

Many experiments record sequential trajectories where each trajectory consists of oscillations and fluctuations around zero. Such trajectories can be viewed as zero-mean functional data. When there are structural breaks (on the sequence of trajectories) in higher order moments, it is not always easy to spot these by mere visual inspection. Motivated by this challenging problem in brain signal analysis, we propose a detection and testing procedure to find the change point in functional covariance. The detection procedure is based on the cumulative sum statistics (CUSUM). The classical testing procedure for functional data depends on a null distribution which depends on infinitely many unknown parameters, though in practice only a finite number of these can be included for the hypothesis test of the existence of change point. This paper provides some theoretical insights on the influence of the number of parameters. Meanwhile, the asymptotic properties of the estimated change point are developed. The effectiveness of the proposed method is numerically validated in simulation studies and an application to investigate changes in rat brain signals following an experimentally-induced stroke.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源