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Robust location estimators in regression models with covariates and responses missing at random

机译:回归模型中的强大位置估计与调节器和随机丢失的反应

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This paper deals with robust marginal estimation under a general regression model when missing data occur in the response and also in some covariates. The target is a marginal location parameter given through an M-functional. To obtain robust Fisher-consistent estimators, properly defined marginal distribution function estimators are considered. These estimators avoid the bias due to missing values assuming a missing at random condition. Three methods are considered to estimate the marginal distribution which allows to obtain the M-location of interest: the well-known inverse probability weighting, a convolution-based method that makes use of the regression model and an augmented inverse probability weighting procedure that prevents against misspecification. Different aspects of their asymptotic behaviour are derived under regularity conditions. The robust studied estimators and their classical relatives are compared through numerical experiments under different missing data models, including clean and contaminated samples. The methodology is illustrated through a real data set.
机译:本文在缺失数据发生在响应中的缺失数据以及一些协变量中时,本文在一般回归模型下进行了稳健的边缘估计。目标是通过M函数给出的边缘位置参数。为了获得强大的Fisher-一致的估计,考虑了适当定义的边缘分布函数估计。由于在随机条件下假设缺少值,这些估计器避免了由于缺失值而导致的偏差。三种方法被认为是估计允许获得感兴趣的M-Location的边缘分布:众所周知的反概率加权,一种利用回归模型的基于卷积的方法和一种防止概率的增强概率加权过程拼盘。它们的渐近行为的不同方面是在规律性条件下得出的。通过不同缺失的数据模型下的数值实验比较了稳健的研究估计器及其经典亲属,包括清洁和受污染的样品。该方法通过真实数据集来说明。

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