Journal of Data Science,
Statistics, and Visualisation

A rank-based estimation method for mixed effects models in the presence of outlying data

Authors

DOI:

https://doi.org/10.52933/jdssv.v4i7.112

Keywords:

Non-parametric regression, mixed effects models, longitudinal data, rank-based regression, robust statistics

Abstract

 We present an approach to the rank-based estimation of mixed effects models, extending existing methods to random effects structures beyond random intercepts. The estimates obtained from our procedure are insensitive to outlying observations including leverage points, (almost) tuning-parameter free and can be computed very efficiently. Furthermore, the resulting estimates allow for model diagnostics, especially with respect to the identification of outlying observations or groups in the data. The properties of the proposed estimators, in particular, their robustness to different outlier types, are studied by means of simulation studies. The methodology is illustrated with applications to the sleep study data set and to data from accelerated aging experiments on photovoltaic (PV) modules.

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Published

2024-11-18

How to Cite

Brune, B., Ortner, I., & Filzmoser, P. (2024). A rank-based estimation method for mixed effects models in the presence of outlying data. Journal of Data Science, Statistics, and Visualisation, 4(7). https://doi.org/10.52933/jdssv.v4i7.112
Journal of Data Science,
Statistics, and Visualisation
Pages