Many parameters and positive-definiteness are two major obstacles in estimating and modelling a correlation matrix for longitudinal data. In addition, when longitudinal data is incomplete, incorrectly modelling the correlation matrix often results in bias in estimating mean regression parameters. In this paper, we introduce a flexible and parsimonious class of regression models for a covariance matrix parameterized using marginal variances and partial autocorrelations. The partial autocorrelations can freely vary in the interval (−1, 1) while maintaining positive defi-niteness of the correlation matrix so the regression parameters in these models will have no con-straints. We propose a class of priors for the regression coefficients and exa...
Likelihood-based marginalized models using random effects have become popular for analyzing longitud...
AbstractWe explore simultaneous modeling of several covariance matrices across groups using the spec...
© 2015 Elsevier Inc. Joint models for a wide class of response variables and longitudinal measuremen...
We consider the analysis of longitudinal data when the covariance function is modeled by additional ...
The article develops marginal models for multivariate longitudinal responses. Overall, the model con...
Joint models for a wide class of response variables and longitudinal measurements consist on a mixed...
We explore simultaneous modeling of several covariance matrices across groups using the spectral (ei...
Estimation of correlation matrices is a challenging problem due to the notorious positive-definitene...
We consider nonparametric regression in longitudinal data with dependence within subjects. The objec...
A convenient reparametrization of the marginal covariance matrix arising in longitudinal studies is ...
peer-reviewedIt can be more challenging and demanding to efficiently model the covariance matrices f...
Abstract: A convenient reparametrization of the marginal covariance matrix arising in longitudinal s...
Improving efficiency for regression coefficients and predicting trajectories of individuals are two ...
An important problem in Statistics is the study of longitudinal data taking into account the effect ...
<div><p></p><p>The estimation of the covariance matrix is a key concern in the analysis of longitudi...
Likelihood-based marginalized models using random effects have become popular for analyzing longitud...
AbstractWe explore simultaneous modeling of several covariance matrices across groups using the spec...
© 2015 Elsevier Inc. Joint models for a wide class of response variables and longitudinal measuremen...
We consider the analysis of longitudinal data when the covariance function is modeled by additional ...
The article develops marginal models for multivariate longitudinal responses. Overall, the model con...
Joint models for a wide class of response variables and longitudinal measurements consist on a mixed...
We explore simultaneous modeling of several covariance matrices across groups using the spectral (ei...
Estimation of correlation matrices is a challenging problem due to the notorious positive-definitene...
We consider nonparametric regression in longitudinal data with dependence within subjects. The objec...
A convenient reparametrization of the marginal covariance matrix arising in longitudinal studies is ...
peer-reviewedIt can be more challenging and demanding to efficiently model the covariance matrices f...
Abstract: A convenient reparametrization of the marginal covariance matrix arising in longitudinal s...
Improving efficiency for regression coefficients and predicting trajectories of individuals are two ...
An important problem in Statistics is the study of longitudinal data taking into account the effect ...
<div><p></p><p>The estimation of the covariance matrix is a key concern in the analysis of longitudi...
Likelihood-based marginalized models using random effects have become popular for analyzing longitud...
AbstractWe explore simultaneous modeling of several covariance matrices across groups using the spec...
© 2015 Elsevier Inc. Joint models for a wide class of response variables and longitudinal measuremen...