Beta regression in the presence of outliers – a wieldy Bayesian solution

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Authors

Van Niekerk, Janet
Bekker, Andriette, 1958-
Arashi, Mohammad

Journal Title

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Volume Title

Publisher

Sage

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.

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Keywords

Beta regression, Heterogeneity, Outlier, Robust Bayes, Student's t

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Citation

Van Niekerk, J., Bekker, A. & Arashi, M. 2019, 'Beta regression in the presence of outliers – a wieldy Bayesian solution', Statistical Methods in Medical Research, vol. 28, no. 12, pp. 3729-3740.