<div><p></p><p>The estimation of the covariance matrix is a key concern in the analysis of longitudinal data. When data consists of multiple groups, it is often assumed the covariance matrices are either equal across groups or are completely distinct. We seek methodology to allow borrowing of strength across potentially similar groups to improve estimation. To that end, we introduce a covariance partition prior which proposes a partition of the groups at each measurement time. Groups in the same set of the partition share dependence parameters for the distribution of the current measurement given the preceding ones, and the sequence of partitions is modeled as a Markov chain to encourage similar structure at nearby measurement times. This a...
Mis-speci cation of covariance structure; Modelling of mean-covariance structures Mathematical Subje...
We propose new regression models for parameterizing covariance structures in longitudinal data analy...
When fitting hierarchical regression models, maximum likelihood (ML) esti-mation has computational (...
In the modeling of longitudinal data from several groups, appropriate handling of the dependence str...
This article proposes a data-driven method to identify parsimony in the covariance matrix of longit...
We explore simultaneous modeling of several covariance matrices across groups using the spectral (ei...
AbstractWe explore simultaneous modeling of several covariance matrices across groups using the spec...
Abstract: A convenient reparametrization of the marginal covariance matrix arising in longitudinal s...
The article develops marginal models for multivariate longitudinal responses. Overall, the model con...
Covariance matrix estimation arises in multivariate problems including multivariate normal sam-pling...
A convenient reparametrization of the marginal covariance matrix arising in longitudinal studies is ...
When the selected parametric model for the covariance structure is far from the true one, the corres...
peer-reviewedIt can be more challenging and demanding to efficiently model the covariance matrices f...
AbstractThe constraint that a covariance matrix must be positive definite presents difficulties for ...
Many parameters and positive-definiteness are two major obstacles in estimating and modelling a corr...
Mis-speci cation of covariance structure; Modelling of mean-covariance structures Mathematical Subje...
We propose new regression models for parameterizing covariance structures in longitudinal data analy...
When fitting hierarchical regression models, maximum likelihood (ML) esti-mation has computational (...
In the modeling of longitudinal data from several groups, appropriate handling of the dependence str...
This article proposes a data-driven method to identify parsimony in the covariance matrix of longit...
We explore simultaneous modeling of several covariance matrices across groups using the spectral (ei...
AbstractWe explore simultaneous modeling of several covariance matrices across groups using the spec...
Abstract: A convenient reparametrization of the marginal covariance matrix arising in longitudinal s...
The article develops marginal models for multivariate longitudinal responses. Overall, the model con...
Covariance matrix estimation arises in multivariate problems including multivariate normal sam-pling...
A convenient reparametrization of the marginal covariance matrix arising in longitudinal studies is ...
When the selected parametric model for the covariance structure is far from the true one, the corres...
peer-reviewedIt can be more challenging and demanding to efficiently model the covariance matrices f...
AbstractThe constraint that a covariance matrix must be positive definite presents difficulties for ...
Many parameters and positive-definiteness are two major obstacles in estimating and modelling a corr...
Mis-speci cation of covariance structure; Modelling of mean-covariance structures Mathematical Subje...
We propose new regression models for parameterizing covariance structures in longitudinal data analy...
When fitting hierarchical regression models, maximum likelihood (ML) esti-mation has computational (...