Jewell Sean, Fearnhead Paul, Witten Daniela
Department of Statistics, University of Washington, Seattle, USA.
Department of Mathematics and Statistics, Lancaster University, Lancaster, UK.
J R Stat Soc Series B Stat Methodol. 2022 Sep;84(4):1082-1104. doi: 10.1111/rssb.12501. Epub 2022 Apr 12.
While many methods are available to detect structural changes in a time series, few procedures are available to quantify the uncertainty of these estimates post-detection. In this work, we fill this gap by proposing a new framework to test the null hypothesis that there is no change in mean around an estimated changepoint. We further show that it is possible to efficiently carry out this framework in the case of changepoints estimated by binary segmentation and its variants, segmentation, or the fused lasso. Our setup allows us to condition on much less information than existing approaches, which yields higher powered tests. We apply our proposals in a simulation study and on a dataset of chromosomal guanine-cytosine content. These approaches are freely available in the R package ChangepointInference at https://jewellsean.github.io/changepoint-inference/.
虽然有许多方法可用于检测时间序列中的结构变化,但检测后量化这些估计值的不确定性的程序却很少。在这项工作中,我们通过提出一个新框架来填补这一空白,该框架用于检验原假设,即围绕估计的变化点均值没有变化。我们进一步表明,在通过二元分割及其变体、分割或融合套索估计的变化点的情况下,可以有效地实施这个框架。我们的设置使我们能够以比现有方法少得多的信息为条件,从而产生功效更高的检验。我们将我们的建议应用于模拟研究和染色体鸟嘌呤 - 胞嘧啶含量的数据集。这些方法可在R包ChangepointInference中免费获取,网址为https://jewellsean.github.io/changepoint-inference/ 。