用随机加权自举法逼近线性模型中m估计量的分布

Yang Yaning
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引用次数: 50

摘要

m估计量的渐近分布通常与误差分布的数量有关,这些数量不能方便地估计。随机加权自举法提供了一种评估m估计量分布的方法,而无需估计误差分布的干扰量。本文用随机加权自举法近似了线性模型中协变量为随机时m -估计量的分布。证明了m估计量分布的随机加权自举估计是一致一致的。此外,通过蒙特卡罗模拟研究了不同选择凸函数、样本量和随机权重的方差估计。泊松加权被推荐用于减少随机加权自举m估计的计算负担。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
APPROXIMATING THE DISTRIBUTION OF M-ESTIMATORS IN LINEAR MODELS BY RANDOMLY WEIGHTED BOOTSTRAP
The asymptotic distribution of the M-estimators are generally related to quan- tities of the error distribution that can not be conveniently estimated.The randomly weighted bootstrap method provides a way of assessing the distribution of the M-estimators without estimating the nuisance quantities of the error distributions.In this paper,the distribution of M-estimators is approximated by the randomly weighted bootstrap method in linear models when the covariates are random.It is shown that the randomly weighted bootstrapping estima- tion of the distribution of the M-estimator is uniformly consistent.Also,the variance estimates is investigated by Monte Carlo simulations for different choices of the convex function,sample size and random weights.Poisson weighting is recommended for reducing the computational burden in the randomly weighted bootstrapping M-estimators.
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