A method for change point detection is proposed. We consider a univariate sequence of independent random variables with piecewise constant expectation and variance, apart from which the distribution may vary periodically. We aim to detect change points in both expectation and variance. For that, we propose a statistical test for the null hypothesis of no change points and an algorithm for change point detection. Both are based on a bivariate moving sum approach that jointly evaluates the mean and the empirical variance. The joint consideration helps improve inference as compared to separate univariate approaches. We infer on the strength and the type of changes with confidence. Nonparametric methodology supports the analysis of diverse data. Additionally, a multi-scale approach addresses complex patterns in change points and effects. We demonstrate the performance through theoretical results and simulation studies. A companion R-package jcp (available on CRAN) is discussed.
翻译:提出了改变点检测方法。 我们考虑的是独立随机变量的单轨序列,有零星不变的预期和差异,除此之外,分布可以定期变化。我们的目标是检测预期和差异的变化点。为此,我们提议对无改变点的无效假设进行统计测试,并用算法来检测变化点。两者都基于双轨移动和计算法,共同评估平均值和经验差异。共同考虑有助于改进与单独单轨方法相比的推论。我们用信心推断变化的强度和类型。非参数方法支持对不同数据的分析。此外,多尺度方法处理变化点和效应的复杂模式。我们通过理论结果和模拟研究来展示其表现。我们讨论了一个相伴的R包装jcp(CRAN可以使用)。