Covariance matrix estimation arises in multivariate problems including multivariate normal sam-pling models and regression models where random effects are jointly modeled, e.g. random-intercept, random-slope models. A Bayesian analysis of these problems requires a prior on the covariance ma-trix. Here we assess, through a simulation study and a real data set, the impact this prior choice has on posterior inference of the covariance matrix. Inverse Wishart distribution is the natural choice for a covariance matrix prior because its conju-gacy on normal model and simplicity, is usually available in Bayesian statistical software. However inverse Wishart distribution presents some undesirable properties from a modeling point of view. It can be ...
In random effect models, error variance (stage 1 variance) and scalar random effect variance compone...
<div><p></p><p>The estimation of the covariance matrix is a key concern in the analysis of longitudi...
This paper proposes a conjugate Bayesian regression model to estimate the covariance matrix of a lar...
Linear mixed effects models arise quite naturally in a number of settings. Two of the more prominent...
http://arxiv.org/abs/1106.3203v1This paper focuses on Bayesian shrinkage methods for covariance matr...
The matrix-F distribution is presented as prior for covariance matrices as an alternative to the con...
A family of prior distributions for covariance matrices is studied. Members of the family possess th...
<p>Multilevel autoregressive models are especially suited for modeling between-person differences in...
This paper focuses on Bayesian shrinkage for covariance matrix estimation. We examine posterior prop...
When fitting hierarchical regression models, maximum likelihood (ML) esti-mation has computational (...
Many authors have considered the problem of estimating a covariance matrix in small samples. In thi...
Maximum likelihood and Bayesian estimation are both frequently used to fit mixed logit models to cho...
The estimation of the covariance matrix is an initial step in many multi-variate statistical methods...
This paper is concerned with the Bayesian estimation of a Multivariate Probit model. In particular,...
A conjugate Wishart prior is used to present a simple and rapid procedure for computing the analytic...
In random effect models, error variance (stage 1 variance) and scalar random effect variance compone...
<div><p></p><p>The estimation of the covariance matrix is a key concern in the analysis of longitudi...
This paper proposes a conjugate Bayesian regression model to estimate the covariance matrix of a lar...
Linear mixed effects models arise quite naturally in a number of settings. Two of the more prominent...
http://arxiv.org/abs/1106.3203v1This paper focuses on Bayesian shrinkage methods for covariance matr...
The matrix-F distribution is presented as prior for covariance matrices as an alternative to the con...
A family of prior distributions for covariance matrices is studied. Members of the family possess th...
<p>Multilevel autoregressive models are especially suited for modeling between-person differences in...
This paper focuses on Bayesian shrinkage for covariance matrix estimation. We examine posterior prop...
When fitting hierarchical regression models, maximum likelihood (ML) esti-mation has computational (...
Many authors have considered the problem of estimating a covariance matrix in small samples. In thi...
Maximum likelihood and Bayesian estimation are both frequently used to fit mixed logit models to cho...
The estimation of the covariance matrix is an initial step in many multi-variate statistical methods...
This paper is concerned with the Bayesian estimation of a Multivariate Probit model. In particular,...
A conjugate Wishart prior is used to present a simple and rapid procedure for computing the analytic...
In random effect models, error variance (stage 1 variance) and scalar random effect variance compone...
<div><p></p><p>The estimation of the covariance matrix is a key concern in the analysis of longitudi...
This paper proposes a conjugate Bayesian regression model to estimate the covariance matrix of a lar...