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A recentred bootstrap procedure for constructing uniformly correct confidence sets under smooth function models

机译:在平滑函数模型下构造统一正确置信度集的最近红色引导程序

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摘要

It has been found, under a smooth function model setting, that the n out of n bootstrap is inconsistent at stationary points of the smooth function, but that the m out of n bootstrap is consistent, provided that a correct convergence rate is specified of the plug-in smooth function estimator. By considering a more general moving-parameter framework, we show that neither of the above bootstrap methods is consistent uniformly over neighbourhoods of stationary points, so that anomalies often arise of coverages of bootstrap sets over certain subsets of parameter values. We propose a recentred bootstrap procedure for constructing confidence sets with uniformly correct coverages over compact sets containing stationary points. A weighted bootstrap procedure is also proposed as an alternative under more general circumstances. Unlike the m out of n bootstrap, both procedures do not require knowledge of the convergence rate of the smooth function estimator. Empirical performance of our procedures is illustrated with numerical examples.
机译:已经发现,在平滑函数模型设置下,n个引导中的n个在平滑函数的固定点处不一致,但是,只要指定了正确的收敛速度,n个引导中的m个是一致的。插件平滑函数估计器。通过考虑一个更通用的运动参数框架,我们表明上述两种引导方法均未在固定点附近均匀一致,因此,在某些参数值子集上的引导集覆盖率经常会出现异常。我们提出了一种最新的自举程序,用于构造包含固定点的紧集上具有统一正确覆盖率的置信集。在更一般的情况下,还建议使用加权引导程序作为替代方法。与m自n自举法不同,这两个过程都不​​需要了解平滑函数估计器的收敛速度。数值示例说明了我们程序的经验性能。

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