We provide a unified approach to a method of estimation of the regression parameter in balanced linear models with a structured covariance matrix that combines a high breakdown point and bounded influence with high asymptotic efficiency at models with multivariate normal errors. Of main interest are linear mixed effects models, but our approach also includes several other standard multivariate models, such as multiple regression, multivariate regression, and multivariate location and scatter. We provide sufficient conditions for the existence of the estimators and corresponding functionals, establish asymptotic properties such as consistency and asymptotic normality, and derive their robustness properties in terms of breakdown point and influence function. All the results are obtained for general identifiable covariance structures and are established under mild conditions on the distribution of the observations, which goes far beyond models with elliptically contoured densities. Some of our results are new and others are more general than existing ones in the literature. In this way this manuscript completes and improves results on high breakdown estimation with high efficiency in a wide variety of multivariate models.
翻译:具有高断点和结构协方差矩阵的线性模型的高效估计方法,我们提供了一种统一的方法,将高断点和有界影响与多元正态误差模型的高渐近效率相结合。主要是线性混合效应模型,但我们的方法还包括几种其他标准的多元模型,如多元回归,多元回归和多元位置和散布。我们提供存在估计器和相应函数的充分条件,建立了渐近特性,例如一致性和渐近正态性,并在断点和影响函数方面推导了它们的鲁棒性属性。所有结果都是针对可识别的协方差结构得出的,并在观察值分布上具有温和的条件,这远远超出了椭圆形轮廓密度模型。我们的某些结果是新的,而其他结果比文献中现有的更为通用。这样,本手稿在各种多元模型中完成了高断点估计与高效率的结果并改进了结果。