A method for simultaneous modelling of the Cholesky decomposition of several covariance ma-trices is presented. We highlight the conceptual and computational advantages of the unconstrained parameterization of the Cholesky decomposition and compare the results with those obtained us-ing the classical spectral (eigenvalue) and variance-correlation decompositions. All these methods amount to decomposing complicated covariance matrices into “dependence ” and “variance ” com-ponents, and then modelling them virtually separately using regression techniques. The entries of the “dependence ” component of the Cholesky decomposition have the unique advantage of being unconstrained so that further reduction of the dimension of its parameter space is ...
In the modeling of longitudinal data from several groups, appropriate handling of the dependence str...
AbstractThe constraint that a covariance matrix must be positive definite presents difficulties for ...
Abstract In this paper, we study the problem of estimating a multivariate nor-mal covariance matrix ...
AbstractA method for simultaneous modelling of the Cholesky decomposition of several covariance matr...
AbstractWe explore simultaneous modeling of several covariance matrices across groups using the spec...
We explore simultaneous modeling of several covariance matrices across groups using the spectral (ei...
A fundamental problem in multivariate statistics is the estimation of covariance matrices. We consid...
This article proposes a data-driven method to identify parsimony in the covariance matrix of longit...
Various real-world problem areas, such as engineering, physics, chemistry, biology, economics, socia...
This paper studies the estimation of a large covariance matrix. We introduce a novel procedure calle...
We present two novel and explicit parametrizations of Cholesky factor of a nonsingular correlation m...
We propose new regression models for parameterizing covariance structures in longitudinal data analy...
When the selected parametric model for the covariance structure is far from the true one, the corres...
Abstract: A convenient reparametrization of the marginal covariance matrix arising in longitudinal s...
Mis-speci cation of covariance structure; Modelling of mean-covariance structures Mathematical Subje...
In the modeling of longitudinal data from several groups, appropriate handling of the dependence str...
AbstractThe constraint that a covariance matrix must be positive definite presents difficulties for ...
Abstract In this paper, we study the problem of estimating a multivariate nor-mal covariance matrix ...
AbstractA method for simultaneous modelling of the Cholesky decomposition of several covariance matr...
AbstractWe explore simultaneous modeling of several covariance matrices across groups using the spec...
We explore simultaneous modeling of several covariance matrices across groups using the spectral (ei...
A fundamental problem in multivariate statistics is the estimation of covariance matrices. We consid...
This article proposes a data-driven method to identify parsimony in the covariance matrix of longit...
Various real-world problem areas, such as engineering, physics, chemistry, biology, economics, socia...
This paper studies the estimation of a large covariance matrix. We introduce a novel procedure calle...
We present two novel and explicit parametrizations of Cholesky factor of a nonsingular correlation m...
We propose new regression models for parameterizing covariance structures in longitudinal data analy...
When the selected parametric model for the covariance structure is far from the true one, the corres...
Abstract: A convenient reparametrization of the marginal covariance matrix arising in longitudinal s...
Mis-speci cation of covariance structure; Modelling of mean-covariance structures Mathematical Subje...
In the modeling of longitudinal data from several groups, appropriate handling of the dependence str...
AbstractThe constraint that a covariance matrix must be positive definite presents difficulties for ...
Abstract In this paper, we study the problem of estimating a multivariate nor-mal covariance matrix ...