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首页> 外文期刊>Statistica Sinica >A BOOTSTRAP METHOD FOR CONSTRUCTING POINTWISE AND UNIFORM CONFIDENCE BANDS FOR CONDITIONAL QUANTILE FUNTIONS
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A BOOTSTRAP METHOD FOR CONSTRUCTING POINTWISE AND UNIFORM CONFIDENCE BANDS FOR CONDITIONAL QUANTILE FUNTIONS

机译:一种用于构造条件分位式函数的点均匀置信带的引导方法

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摘要

This paper is concerned with inference about the conditional quantile function in a nonparametric quantile regression model. Any method for constructing a confidence interval or band for this function must deal with the asymptotic bias of nonparametric estimators of the function. In such estimation methods, as local polynomial estimation, this is usually done through undersmoothing or explicit bias correction. The latter usually requires oversmoothing. However, there are no satisfactory empirical methods for selecting bandwidths that under- or oversmooth. This paper extends the bootstrap method of Hall and Horowitz (2013) for conditional mean functions to conditional quantile functions. The paper also shows how the bootstrap method can be used to obtain uniform confidence bands. The bootstrap method uses only bandwidths that are selected by standard methods such as cross validation and plug-in. It does not use under- or oversmoothing. The results of Monte Carlo experiments illustrate the numerical performance of the bootstrap method.
机译:本文涉及关于非参数分位数回归模型中的条件定位函数的推断。用于构建该函数的置信区间或频带的任何方法都必须处理该功能的非参数估计器的渐近偏差。在这种估计方法中,作为局部多项式估计,通常通过强烈或明确的偏压校正来完成。后者通常需要过性化。但是,没有令人满意的经验方法,用于选择欠压或过度的带宽。本文扩展了HALL和HOROWITZ(2013)的引导方法,以便有条件的均值函数函数。本文还示出了如何使用自动启动方法来获得均匀置信带。 Bootstrap方法仅使用标准方法选择的带宽,例如交叉验证和插件。它不会在或过天空使用。蒙特卡罗实验的结果说明了引导方法的数值。

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