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Block bootstrap for periodic characteristics of periodically correlated time series

机译:块引导程序,用于周期性相关的时间序列的周期性特征

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This research is dedicated to the study of periodic characteristics of periodically correlated time series such as seasonal means, seasonal variances and autocovariance functions. Two bootstrap methods are used: the extension of the usual Moving Block Bootstrap (EMBB) and the Generalised Seasonal Block Bootstrap (GSBB). The first approach is proposed, because the usual Moving Block Bootstrap does not preserve the periodic structure contained in the data and cannot be applied for the considered problems. For the aforementioned periodic characteristics the bootstrap estimators are introduced and consistency of the EMBB in all cases is obtained. Moreover, the GSBB consistency results for seasonal variances and autocovariance function are presented. Additionally, the bootstrap consistency of both considered techniques for smooth functions of the parameters of interest is obtained. Finally, the simultaneous bootstrap confidence intervals are constructed. A simulation study to compare their actual coverage probabilities is provided. A real data example is presented.
机译:这项研究致力于研究周期性相关时间序列的周期性特征,例如季节均值,季节方差和自协方差函数。使用了两种引导程序方法:常规移动块引导程序(EMBB)的扩展和广义季节性块引导程序(GSBB)的扩展。之所以提出第一种方法,是因为通常的移动块引导程序不保留数据中包含的周期性结构,并且不能应用于所考虑的问题。对于上述周期性特征,引入了自举估计器,并且在所有情况下都获得了EMBB的一致性。此外,给出了季节变化和自协方差函数的GSBB一致性结果。另外,获得了两种考虑的技术的自举一致性,以使目标参数平滑运行。最终,构建了同时自举置信区间。提供了一个仿真研究,以比较其实际覆盖率。给出了一个真实的数据示例。

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