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...
Longitudinal data sets consist of repeated observations of an outcome over time, and a corresponding...
A convenient reparametrization of the marginal covariance matrix arising in longitudinal studies is ...
Improving efficiency for regression coefficients and predicting trajectories of individuals are two ...
A modeling paradigm is proposed for covariate, variance and working correlation structure selection ...
A modeling paradigm is proposed for covariate, variance and working correlation structure selection ...
The Generalized Estimating Equations (GEE) method is one of the most commonly used statistical metho...
International audienceRecently, Azari et al (2006) showed that (AIC) criterion and its corrected ver...
International audienceRecently, Azari et al (2006) showed that (AIC) criterion and its corrected ver...
Longitudinal data analysis is common in biomedical research area. Generalized estimating equations (...
Selecting an appropriate correlation structure in analyzing longitudinal data can greatly improve th...
Selecting an appropriate correlation structure in analyzing longitudinal data can greatly improve th...
We investigate methods for data-based selection of working covariance models in the analysis of corr...
In longitudinal data with correlated errors, we apply the likelihood and residual likelihood approac...
We investigate methods for data-based selection of working covariance models in the analysis of corr...
Longitudinal data sets consist of repeated observations of an outcome over time, and a corresponding...
Longitudinal data sets consist of repeated observations of an outcome over time, and a corresponding...
A convenient reparametrization of the marginal covariance matrix arising in longitudinal studies is ...
Improving efficiency for regression coefficients and predicting trajectories of individuals are two ...
A modeling paradigm is proposed for covariate, variance and working correlation structure selection ...
A modeling paradigm is proposed for covariate, variance and working correlation structure selection ...
The Generalized Estimating Equations (GEE) method is one of the most commonly used statistical metho...
International audienceRecently, Azari et al (2006) showed that (AIC) criterion and its corrected ver...
International audienceRecently, Azari et al (2006) showed that (AIC) criterion and its corrected ver...
Longitudinal data analysis is common in biomedical research area. Generalized estimating equations (...
Selecting an appropriate correlation structure in analyzing longitudinal data can greatly improve th...
Selecting an appropriate correlation structure in analyzing longitudinal data can greatly improve th...
We investigate methods for data-based selection of working covariance models in the analysis of corr...
In longitudinal data with correlated errors, we apply the likelihood and residual likelihood approac...
We investigate methods for data-based selection of working covariance models in the analysis of corr...
Longitudinal data sets consist of repeated observations of an outcome over time, and a corresponding...
Longitudinal data sets consist of repeated observations of an outcome over time, and a corresponding...
A convenient reparametrization of the marginal covariance matrix arising in longitudinal studies is ...
Improving efficiency for regression coefficients and predicting trajectories of individuals are two ...