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Modified regression estimators using robust regression methods and covariance matrices in stratified random sampling

机译:使用强大的回归方法和协方差矩阵在分层随机抽样中的修改回归估计

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摘要

This article proposes new regression-type estimators by considering Tukey-M, Hampel M, Huber MM, LTS, LMS and LAD robust methods and MCD and MVE robust covariance matrices in stratified sampling. Theoretically, we obtain the mean square error (MSE) for these estimators. We compare the efficiencies based on MSE equations, between the proposed estimators and the traditional combined and separate regression estimators. As a result of these comparisons, we observed that our proposed estimators give more efficient results than traditional approaches. And, these theoretical results are supported with the aid of numerical examples and simulation based on data sets that include outliers.
机译:本文通过考虑Tukey-M,Hampel M,Huber MM,LTS,LMS和LAD鲁棒方法和MCD和MVAT强大的协方差矩阵来提出新的回归型估计器。从理论上讲,我们获得这些估算器的均方误差(MSE)。我们将基于MSE方程的效率进行比较,建议的估算符和传统的联合和单独的回归估算。由于这些比较,我们观察到,我们的建议估算者比传统方法提供更有效的结果。并且,这些理论结果是借助基于包括异常值的数据集的数值示例和仿真来支持。

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