A comparison of methods for estimating the random effects distribution of a linear mixed model A comparison of methods for estimating the random effects distribution of a linear mixed model

W Ghidey, Emmanuel Lesaffre, G Verbeke

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Abstract

This article reviews various recently suggested approaches to estimate the random effects distribution in a linear mixed model, i.e. (1) the smoothing by roughening approach of Shen and Louis,(1) (2) the semi-non-parametric approach of Zhang and Davidian,(2) (3) the heterogeneity model of Verbeke and Lesaffre(3) and (4) a flexible approach of Ghidey et al.(4) These four approaches are compared via an extensive simulation study. We conclude that for the considered cases, the approach of Ghidey et al.(4) often shows to have the smallest integrated mean squared error for estimating the random effects distribution. An analysis of a longitudinal dental data set illustrates the performance of the methods in a practical example.
Original languageUndefined/Unknown
Pages (from-to)575-600
Number of pages26
JournalStatistical Methods in Medical Research
Volume19
Issue number6
DOIs
Publication statusPublished - 2010

Research programs

  • EMC NIHES-01-66-01

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