Robust Regression-Ratio-Type Estimators of the Mean Utilizing Two Auxiliary Variables: A Simulation Study

Many authors defined the modified version of the mean estimator by using two auxiliary variables. These proposed estimators highly depend on the calculated regression coefficients. In the presence of outliers, these estimators do not give satisfactory results. In this study, we improve the suggested...

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Main Authors: Tolga Zaman, Emre Dünder, Ahmed Audu, David Anekeya Alilah, Usman Shahzad, Muhammad Hanif
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2021/6383927
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spelling doaj-303813b36d8f40458c60e895a94e9d4f2021-09-20T00:28:57ZengHindawi LimitedMathematical Problems in Engineering1563-51472021-01-01202110.1155/2021/6383927Robust Regression-Ratio-Type Estimators of the Mean Utilizing Two Auxiliary Variables: A Simulation StudyTolga Zaman0Emre Dünder1Ahmed Audu2David Anekeya Alilah3Usman Shahzad4Muhammad Hanif5Çankırı Karatekin UniversityOndokuz Mayıs UniversityDepartment of MathematicsDepartment of MathematicsDepartment of Mathematics and StatisticsDepartment of Mathematics and StatisticsMany authors defined the modified version of the mean estimator by using two auxiliary variables. These proposed estimators highly depend on the calculated regression coefficients. In the presence of outliers, these estimators do not give satisfactory results. In this study, we improve the suggested estimators using several robust regression techniques while obtaining the regression coefficients. We compared the efficiencies between the suggested estimators and the estimators presented in the literature. We used two numerical examples and a simulation study to support these theoretical results. Empirical results show that the modified ratio estimator performs well in the presence of outliers when adopting robust regression techniques.http://dx.doi.org/10.1155/2021/6383927
collection DOAJ
language English
format Article
sources DOAJ
author Tolga Zaman
Emre Dünder
Ahmed Audu
David Anekeya Alilah
Usman Shahzad
Muhammad Hanif
spellingShingle Tolga Zaman
Emre Dünder
Ahmed Audu
David Anekeya Alilah
Usman Shahzad
Muhammad Hanif
Robust Regression-Ratio-Type Estimators of the Mean Utilizing Two Auxiliary Variables: A Simulation Study
Mathematical Problems in Engineering
author_facet Tolga Zaman
Emre Dünder
Ahmed Audu
David Anekeya Alilah
Usman Shahzad
Muhammad Hanif
author_sort Tolga Zaman
title Robust Regression-Ratio-Type Estimators of the Mean Utilizing Two Auxiliary Variables: A Simulation Study
title_short Robust Regression-Ratio-Type Estimators of the Mean Utilizing Two Auxiliary Variables: A Simulation Study
title_full Robust Regression-Ratio-Type Estimators of the Mean Utilizing Two Auxiliary Variables: A Simulation Study
title_fullStr Robust Regression-Ratio-Type Estimators of the Mean Utilizing Two Auxiliary Variables: A Simulation Study
title_full_unstemmed Robust Regression-Ratio-Type Estimators of the Mean Utilizing Two Auxiliary Variables: A Simulation Study
title_sort robust regression-ratio-type estimators of the mean utilizing two auxiliary variables: a simulation study
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1563-5147
publishDate 2021-01-01
description Many authors defined the modified version of the mean estimator by using two auxiliary variables. These proposed estimators highly depend on the calculated regression coefficients. In the presence of outliers, these estimators do not give satisfactory results. In this study, we improve the suggested estimators using several robust regression techniques while obtaining the regression coefficients. We compared the efficiencies between the suggested estimators and the estimators presented in the literature. We used two numerical examples and a simulation study to support these theoretical results. Empirical results show that the modified ratio estimator performs well in the presence of outliers when adopting robust regression techniques.
url http://dx.doi.org/10.1155/2021/6383927
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