robustlmm: An R Package for Robust Estimation of Linear Mixed-Effects Models

As any real-life data, data modeled by linear mixed-effects models often contain outliers or other contamination. Even little contamination can drive the classic estimates far away from what they would be without the contamination. At the same time, datasets that require mixed-effects modeling are o...

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Main Author: Manuel Koller
Format: Article
Language:English
Published: Foundation for Open Access Statistics 2016-12-01
Series:Journal of Statistical Software
Subjects:
R
Online Access:https://www.jstatsoft.org/index.php/jss/article/view/2944
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spelling doaj-5db2bae5e90b4b97a15868c1045089472020-11-24T21:04:30ZengFoundation for Open Access StatisticsJournal of Statistical Software1548-76602016-12-0175112410.18637/jss.v075.i061071robustlmm: An R Package for Robust Estimation of Linear Mixed-Effects ModelsManuel KollerAs any real-life data, data modeled by linear mixed-effects models often contain outliers or other contamination. Even little contamination can drive the classic estimates far away from what they would be without the contamination. At the same time, datasets that require mixed-effects modeling are often complex and large. This makes it difficult to spot contamination. Robust estimation methods aim to solve both problems: to provide estimates where contamination has only little influence and to detect and flag contamination. We introduce an R package, robustlmm, to robustly fit linear mixed-effects models. The package's functions and methods are designed to closely equal those offered by lme4, the R package that implements classic linear mixed-effects model estimation in R. The robust estimation method in robustlmm is based on the random effects contamination model and the central contamination model. Contamination can be detected at all levels of the data. The estimation method does not make any assumption on the data's grouping structure except that the model parameters are estimable. robustlmm supports hierarchical and non-hierarchical (e.g., crossed) grouping structures. The robustness of the estimates and their asymptotic efficiency is fully controlled through the function interface. Individual parts (e.g., fixed effects and variance components) can be tuned independently. In this tutorial, we show how to fit robust linear mixed-effects models using robustlmm, how to assess the model fit, how to detect outliers, and how to compare different fits.https://www.jstatsoft.org/index.php/jss/article/view/2944robust statisticsmixed-effects modelhierarchical modelANOVARcrossedrandom effect
collection DOAJ
language English
format Article
sources DOAJ
author Manuel Koller
spellingShingle Manuel Koller
robustlmm: An R Package for Robust Estimation of Linear Mixed-Effects Models
Journal of Statistical Software
robust statistics
mixed-effects model
hierarchical model
ANOVA
R
crossed
random effect
author_facet Manuel Koller
author_sort Manuel Koller
title robustlmm: An R Package for Robust Estimation of Linear Mixed-Effects Models
title_short robustlmm: An R Package for Robust Estimation of Linear Mixed-Effects Models
title_full robustlmm: An R Package for Robust Estimation of Linear Mixed-Effects Models
title_fullStr robustlmm: An R Package for Robust Estimation of Linear Mixed-Effects Models
title_full_unstemmed robustlmm: An R Package for Robust Estimation of Linear Mixed-Effects Models
title_sort robustlmm: an r package for robust estimation of linear mixed-effects models
publisher Foundation for Open Access Statistics
series Journal of Statistical Software
issn 1548-7660
publishDate 2016-12-01
description As any real-life data, data modeled by linear mixed-effects models often contain outliers or other contamination. Even little contamination can drive the classic estimates far away from what they would be without the contamination. At the same time, datasets that require mixed-effects modeling are often complex and large. This makes it difficult to spot contamination. Robust estimation methods aim to solve both problems: to provide estimates where contamination has only little influence and to detect and flag contamination. We introduce an R package, robustlmm, to robustly fit linear mixed-effects models. The package's functions and methods are designed to closely equal those offered by lme4, the R package that implements classic linear mixed-effects model estimation in R. The robust estimation method in robustlmm is based on the random effects contamination model and the central contamination model. Contamination can be detected at all levels of the data. The estimation method does not make any assumption on the data's grouping structure except that the model parameters are estimable. robustlmm supports hierarchical and non-hierarchical (e.g., crossed) grouping structures. The robustness of the estimates and their asymptotic efficiency is fully controlled through the function interface. Individual parts (e.g., fixed effects and variance components) can be tuned independently. In this tutorial, we show how to fit robust linear mixed-effects models using robustlmm, how to assess the model fit, how to detect outliers, and how to compare different fits.
topic robust statistics
mixed-effects model
hierarchical model
ANOVA
R
crossed
random effect
url https://www.jstatsoft.org/index.php/jss/article/view/2944
work_keys_str_mv AT manuelkoller robustlmmanrpackageforrobustestimationoflinearmixedeffectsmodels
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