In this paper we propose new methodology for the data segmentation, also known as multiple change point problem, in a general framework including classic mean change scenarios, changes in linear regression but also changes in the time series structure such as in the parameters of Poisson-autoregressive time series. In particular, we derive a general theory based on estimating equations proving consistency for the number of change points as well as rates of convergence for the estimators of the locations of the change points. More precisely, two different types of MOSUM (moving sum) statistics are considered: A MOSUM-Wald statistic based on differences of local estimators and a MOSUM-score statistic based on a global estimator. The latter is usually computationally less involved in particular in non-linear problems where no closed form of the estimator is known such that numerical methods are required. Finally, we evaluate the methodology by means of simulated data as well as using some geophysical well-log data.
翻译:在本文中,我们提出了一个数据分割的新方法,也称为多变点问题,在包括经典平均变化假设情景在内的一般框架内,提出数据分割的新方法,包括线性回归的变化,以及时间序列结构的变化,如Poisson-audioregrestious时间序列参数中的时间序列结构的变化。特别是,我们根据估计公式得出一个一般性理论,以证明变化点数的一致性以及变化点地点估计员的趋同率。更准确地说,我们考虑了两种不同类型的MOSUM(移动总和)统计数据:基于局部估计数字差异的MOSUM-Wald统计和基于全球估计数字的MOSUM核心统计。后者通常在计算上较少涉及非线性问题,因为据知没有封闭式的测算器,因此需要数字方法。最后,我们通过模拟数据以及使用某些地球物理水深数据来评估方法。