AbstractThe constraint that a covariance matrix must be positive definite presents difficulties for modeling its structure. Pourahmadi (1999, 2000) [18,19] proposed a parameterization of the covariance matrix for univariate longitudinal data in which the parameters are unconstrained, which is based on the modified Cholesky decomposition of the covariance matrix. We extend this approach to multivariate longitudinal data by developing a modified Cholesky block decomposition that provides an alternative unconstrained parameterization for the covariance matrix, and we propose parsimonious models within this parameterization. A Fisher scoring algorithm is developed for obtaining maximum likelihood estimates of parameters, assuming that the obser...
In the modeling of longitudinal data from several groups, appropriate handling of the dependence str...
We consider the joint modelling of the mean and covariance structures for the general antedependence...
We propose new regression models for parameterizing covariance structures in longitudinal data analy...
peer-reviewedIt can be more challenging and demanding to efficiently model the covariance matrices f...
Modeling covariance structure is important for efficient estimation in longitudinal data models. Mod...
AbstractA method for simultaneous modelling of the Cholesky decomposition of several covariance matr...
Missing data in longitudinal studies can create enormous challenges in data analysis when coupled wi...
Abstract: A convenient reparametrization of the marginal covariance matrix arising in longitudinal s...
This article proposes a data-driven method to identify parsimony in the covariance matrix of longit...
peer-reviewedA data-driven method for modelling intra-subject covariance matrix is introduced to con...
peer-reviewedPourahmadi (1999) provided a convenient reparameterisation of the marginal covariance ...
peer-reviewedConventionally, in longitudinal studies, the mean structure has been thought to be mor...
We propose a double-robust procedure for modeling the correlation matrix of a longitudinal dataset. ...
A convenient reparametrization of the marginal covariance matrix arising in longitudinal studies is ...
Many testing, estimation and confidence interval procedures discussed in the multivariate statistica...
In the modeling of longitudinal data from several groups, appropriate handling of the dependence str...
We consider the joint modelling of the mean and covariance structures for the general antedependence...
We propose new regression models for parameterizing covariance structures in longitudinal data analy...
peer-reviewedIt can be more challenging and demanding to efficiently model the covariance matrices f...
Modeling covariance structure is important for efficient estimation in longitudinal data models. Mod...
AbstractA method for simultaneous modelling of the Cholesky decomposition of several covariance matr...
Missing data in longitudinal studies can create enormous challenges in data analysis when coupled wi...
Abstract: A convenient reparametrization of the marginal covariance matrix arising in longitudinal s...
This article proposes a data-driven method to identify parsimony in the covariance matrix of longit...
peer-reviewedA data-driven method for modelling intra-subject covariance matrix is introduced to con...
peer-reviewedPourahmadi (1999) provided a convenient reparameterisation of the marginal covariance ...
peer-reviewedConventionally, in longitudinal studies, the mean structure has been thought to be mor...
We propose a double-robust procedure for modeling the correlation matrix of a longitudinal dataset. ...
A convenient reparametrization of the marginal covariance matrix arising in longitudinal studies is ...
Many testing, estimation and confidence interval procedures discussed in the multivariate statistica...
In the modeling of longitudinal data from several groups, appropriate handling of the dependence str...
We consider the joint modelling of the mean and covariance structures for the general antedependence...
We propose new regression models for parameterizing covariance structures in longitudinal data analy...