Abstract

Linear mixed effects model (LMEM) is efficient in modeling repeated measures longitudinal data. However, little research has been done in developing goodness-of-fit measures that can evaluate the models, particularly those that can be interpreted in an absolute sense without referencing a null model. This paper proposes three coefficient of determination (R2) as goodness-of-fit measures for LMEM with repeated measures longitudinal data. Theorems are presented describing the properties of R2 and relationships between the R2 statistics. A simulation study was conducted to evaluate and compare the R2 along with other criteria from literature. Finally, we applied the proposed R2 to a real virologic response data of an HIV-patient cohort. We conclude that our proposed R2 statistics have more advantages than other goodness-of-fit measures in the literature, in terms of robustness to sample size, intuitive interpretation, well-defined range, and unnecessary to determine a null model.

Keywords

Goodness of fitStatisticsMathematicsNull modelRobustness (evolution)Longitudinal dataRepeated measures designMixed modelEconometricsNull hypothesisComputer scienceData miningCombinatorics

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Publication Info

Year
2008
Type
article
Volume
35
Issue
10
Pages
1081-1092
Citations
49
Access
Closed

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Honghu Liu, Yan Zheng, Jie Shen (2008). Goodness-of-fit measures of <i>R</i> <sup>2</sup> for repeated measures mixed effect models. Journal of Applied Statistics , 35 (10) , 1081-1092. https://doi.org/10.1080/02664760802124422

Identifiers

DOI
10.1080/02664760802124422