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Consistency of a hybrid block bootstrap for distribution and variance estimation for sample quantiles of weakly dependent sequences

机译:用于弱相关序列的样本分位数的分布和方差估计的混合块引导程序的一致性

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Consistency and optimality of block bootstrap schemes for distribution and variance estimation of smooth functionals of dependent data have been thoroughly investigated by Hall, Horowitz & Jing (), among others. However, for nonsmooth functionals, such as quantiles, much less is known. Existing results, due to Sun & Lahiri (), regarding strong consistency for distribution and variance estimation via the moving block bootstrap (MBB) require that b, where b=n/ is the number of resampled blocks to be pasted together to form the bootstrap data series, n is the available sample size, and is the block length. Here we show that, in fact, weak consistency holds for any b such that 1b=O(n/). In other words we show that a hybrid between the subsampling bootstrap (b=1) and MBB is consistent. Empirical results illustrate the performance of hybrid block bootstrap estimators for varying numbers of blocks.
机译:Hall,Horowitz和Jing()等人已经对用于相关数据的平滑函数的分布和方差估计的块引导程序的一致性和最优性进行了深入研究。但是,对于不光滑的功能(例如分位数),了解的很少。由于Sun和Lahiri(),关于通过移动块引导程序(MBB)进行分布和方差估计的强一致性的现有结果要求b,其中b = n /是要粘贴在一起以形成引导程序的重采样块的数量数据系列,n是可用的样本大小,并且是块长度。在这里,我们表明,实际上,对于任何b都具有弱一致性,使得1b = O(n /)。换句话说,我们表明子采样引导程序(b = 1)和MBB之间的混合是一致的。实验结果说明了混合块自举估计器在不同数量的块上的性能。

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