Modeling strategies in longitudinal data analysis: Covariate, variance function and correlation structure selection
Data(s) |
2010
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Resumo |
A modeling paradigm is proposed for covariate, variance and working correlation structure selection for longitudinal data analysis. Appropriate selection of covariates is pertinent to correct variance modeling and selecting the appropriate covariates and variance function is vital to correlation structure selection. This leads to a stepwise model selection procedure that deploys a combination of different model selection criteria. Although these criteria find a common theoretical root based on approximating the Kullback-Leibler distance, they are designed to address different aspects of model selection and have different merits and limitations. For example, the extended quasi-likelihood information criterion (EQIC) with a covariance penalty performs well for covariate selection even when the working variance function is misspecified, but EQIC contains little information on correlation structures. The proposed model selection strategies are outlined and a Monte Carlo assessment of their finite sample properties is reported. Two longitudinal studies are used for illustration. |
Identificador | |
Publicador |
Elsevier |
Relação |
DOI:10.1016/j.csda.2009.11.006 Wang, You-Gan & Hin, Lin-Yee (2010) Modeling strategies in longitudinal data analysis: Covariate, variance function and correlation structure selection. Computational Statistics & Data Analysis, 54(12), pp. 3359-3370. |
Fonte |
Science & Engineering Faculty |
Palavras-Chave | #generalized estimating equations #working-correlation-structure #quasi-likelihood #linear-models #gee analyses #misspecification #criteria #error |
Tipo |
Journal Article |