The analysis of record-breaking events is of interest in fields such as climatology, hydrology, economy or sports. In connection with the record occurrence, we propose three distribution-free statistics for the changepoint detection problem. They are CUSUM-type statistics based on the upper and/or lower record indicators which occur in a series. Using a version of the functional central limit theorem, we show that the CUSUM-type statistics are asymptotically Kolmogorov distributed. The main results under the null hypothesis are based on series of independent and identically distributed random variables, but a statistic to deal with series with seasonal component and serial correlation is also proposed. A Monte Carlo study of size, power and changepoint estimate has been performed. Finally, the methods are illustrated by analyzing the time series of temperatures at Madrid, Spain. The $\textsf{R}$ package $\texttt{RecordTest}$ publicly available on CRAN implements the proposed methods.
翻译:对破纪录事件的分析对气候学、水文学、经济或体育等领域感兴趣。关于记录发生情况,我们建议为变化点检测问题提供三种无分布的统计,它们是CUSUM类型的统计,以一系列的上下记录指标为基础。我们使用功能中心定理的版本,显示CUSUM类型的统计是零星分布的科尔莫戈罗夫。无效假设下的主要结果以一系列独立和分布相同的随机变量为基础,但也提出了处理季节性成份和序列关联的系列统计。对规模、功率和变化点估计进行了蒙特卡洛研究。最后,通过分析西班牙马德里的温度时间序列来说明这些方法。CRAN上公开提供的$\ textf{R}$stextt{RecordTestate} 套件采用了拟议方法。