Working covariance model selection for generalized estimating equations
Data(s) |
2011
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Resumo |
We investigate methods for data-based selection of working covariance models in the analysis of correlated data with generalized estimating equations. We study two selection criteria: Gaussian pseudolikelihood and a geodesic distance based on discrepancy between model-sensitive and model-robust regression parameter covariance estimators. The Gaussian pseudolikelihood is found in simulation to be reasonably sensitive for several response distributions and noncanonical mean-variance relations for longitudinal data. Application is also made to a clinical dataset. Assessment of adequacy of both correlation and variance models for longitudinal data should be routine in applications, and we describe open-source software supporting this practice. |
Identificador | |
Publicador |
John Wiley & Sons Inc |
Relação |
DOI:10.1002/sim.4300 Carey, Vincent J. & Wang, You-Gan (2011) Working covariance model selection for generalized estimating equations. Statistics in Medicine, 30(26), pp. 3117-3124. |
Fonte |
Science & Engineering Faculty |
Palavras-Chave | #pseudolikelihood #correlation #covariance models #estimating functions #longitudinal data #repeated measures #longitudinal count data #linear-models #binary data #parameters #regression #overdispersion #responses #tests |
Tipo |
Journal Article |