在使用稳健回归估计量时,在指定设计点比较回归线的异方差方法。

R. Wilcox
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引用次数: 14

摘要

众所周知,普通最小二乘(OLS)回归估计量是不稳健的。人们提出了许多鲁棒回归估计量,并推导了基于这些估计量的推理方法。然而,对于两个独立的群体,设θj (X)为给定X的基于鲁棒回归估计量的第j群体位置的某个条件测度。一个尚未解决的问题是以允许组内和组间异方差的方式计算θ1(X) - θ2(X)的1 - α置信区间。本文报道了实现这一目标的一种简单方法的有限样本性质。模拟表明,在控制第一类错误的概率方面,该方法在广泛的情况下表现得非常好,即使样本量相对较小。原则上,任何稳健回归估计器都可以使用。模拟主要集中在Theil-Sen估计器上,但也注意到使用Yohai的mm估计器以及Koenker和Bassett分位数回归估计器的一些结果。来自Well Elderly II研究的数据,使用皮质醇唤醒反应作为协变量来处理有意义活动的测量,用于说明基于非参数回归估计量的现有方法和本文建议的方法之间的选择可以产生实际的差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A HETEROSCEDASTIC METHOD FOR COMPARING REGRESSION LINES AT SPECIFIED DESIGN POINTS WHEN USING A ROBUST REGRESSION ESTIMATOR.
It is well known that the ordinary least squares (OLS) regression estimator is not robust. Many robust regression estimators have been proposed and inferential methods based on these estimators have been derived. However, for two independent groups, let θj (X) be some conditional measure of location for the jth group, given X, based on some robust regression estimator. An issue that has not been addressed is computing a 1 - α confidence interval for θ1(X) - θ2(X) in a manner that allows both within group and between group hetereoscedasticity. The paper reports the finite sample properties of a simple method for accomplishing this goal. Simulations indicate that, in terms of controlling the probability of a Type I error, the method performs very well for a wide range of situations, even with a relatively small sample size. In principle, any robust regression estimator can be used. The simulations are focused primarily on the Theil-Sen estimator, but some results using Yohai's MM-estimator, as well as the Koenker and Bassett quantile regression estimator, are noted. Data from the Well Elderly II study, dealing with measures of meaningful activity using the cortisol awakening response as a covariate, are used to illustrate that the choice between an extant method based on a nonparametric regression estimator, and the method suggested here, can make a practical difference.
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