Statistical Methods in Medical Research, Volume (28), No (12), Year (2019-12) , Pages (3729-3740)

Title : ( Beta regression in the presence of outliers – A wieldy Bayesian solution )

Authors: Janet van Niekerk , Andriette Bekker , Mohammad Arashi ,

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Abstract

Real phenomena often leads to challenges in data. One of these is outliers or influential values. Especially in a small sample, these values can have a major influence on the modeling process. In the beta regression framework, this issue has been addressed mainly in two ways: the assumption of a different response model and the application of a minimum density power divergence estimation (MDPDE) procedure. In this paper, however, we propose a simple hierarchical Bayesian methodology in the context of a varying dispersion beta response model that is robust to outliers, as shown through an extensive simulation study and analysis of two real data sets. To robustify Bayesian modeling, a heavy-tailed Student\\\\\\\'s t prior with uniform degrees of freedom is adopted for the regression coefficients. This proposal results in a wieldy implementation procedure which avails practical use of the approach.

Keywords

, Beta regression, heterogeneity, outlier, robust Bayes, Student\\\\\\\'s t
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@article{paperid:1081450,
author = {Janet Van Niekerk and Andriette Bekker and Arashi, Mohammad},
title = {Beta regression in the presence of outliers – A wieldy Bayesian solution},
journal = {Statistical Methods in Medical Research},
year = {2019},
volume = {28},
number = {12},
month = {December},
issn = {0962-2802},
pages = {3729--3740},
numpages = {11},
keywords = {Beta regression; heterogeneity; outlier; robust Bayes; Student\\\\\\\'s t},
}

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%0 Journal Article
%T Beta regression in the presence of outliers – A wieldy Bayesian solution
%A Janet Van Niekerk
%A Andriette Bekker
%A Arashi, Mohammad
%J Statistical Methods in Medical Research
%@ 0962-2802
%D 2019

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