What is it about?
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.
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Why is it important?
This study is the first based on robust estimates and covariance matrices study in stratified random sampling.
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This page is a summary of: Modified regression estimators using robust regression methods and covariance matrices in stratified random sampling, Communication in Statistics- Theory and Methods, April 2019, Taylor & Francis,
DOI: 10.1080/03610926.2019.1588324.
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