The authors explore likelihood-based methods for making inferences about the components of variance in a general normal mixed linear model. In particular, they use local asymptotic approximations to construct confidence intervals for the components of variance when the components are close to the boundary of the parameter space. In the process, they explore the question of how to profile the restricted likelihood (REML). Also, they show that general REML estimates are less likely to fall on the boundary of the parameter space than maximum likelihood estimates and that the likelihood ratio test based on the local asymptotic approximation has higher power than the likelihood ratio test based on the usual chi-squared approximation. They examine ...
The goal of our article is to provide a transparent, robust, and computationally feasible statistica...
In linear mixed-effects modelling of experiments, estimation of variance components, prediction of r...
In linear mixed-effects modelling of experiments, estimation of variance components, prediction of r...
In this paper, we develop likelihood-based methods for making inferences about the components of var...
Suppose that y is an n x 1 observable random vector, whose distribution is multivariate normal with ...
Mixed effects models are widely used to describe heterogeneity in a population, in particular inter ...
Mixed effects models are widely used to describe heterogeneity in a population, in particular inter ...
Mixed effects models are widely used to describe heterogeneity in a population, in particular inter ...
AbstractRestricted maximum likelihood (REML) estimation is a method employed to estimate variance-co...
AbstractRestricted maximum likelihood (REML) estimation is a method employed to estimate variance-co...
In this thesis, the Maximum Likelihood and Restricted Maximum Likelihood methods of estimating vari...
Common methods for estimating variance components in Linear Mixed Models include Maximum Likelihood ...
Common methods for estimating variance components in Linear Mixed Models include Maximum Likelihood ...
Common methods for estimating variance components in Linear Mixed Models include Maximum Likelihood ...
Variance components estimation originated with estimating error variance in analysis of variance by ...
The goal of our article is to provide a transparent, robust, and computationally feasible statistica...
In linear mixed-effects modelling of experiments, estimation of variance components, prediction of r...
In linear mixed-effects modelling of experiments, estimation of variance components, prediction of r...
In this paper, we develop likelihood-based methods for making inferences about the components of var...
Suppose that y is an n x 1 observable random vector, whose distribution is multivariate normal with ...
Mixed effects models are widely used to describe heterogeneity in a population, in particular inter ...
Mixed effects models are widely used to describe heterogeneity in a population, in particular inter ...
Mixed effects models are widely used to describe heterogeneity in a population, in particular inter ...
AbstractRestricted maximum likelihood (REML) estimation is a method employed to estimate variance-co...
AbstractRestricted maximum likelihood (REML) estimation is a method employed to estimate variance-co...
In this thesis, the Maximum Likelihood and Restricted Maximum Likelihood methods of estimating vari...
Common methods for estimating variance components in Linear Mixed Models include Maximum Likelihood ...
Common methods for estimating variance components in Linear Mixed Models include Maximum Likelihood ...
Common methods for estimating variance components in Linear Mixed Models include Maximum Likelihood ...
Variance components estimation originated with estimating error variance in analysis of variance by ...
The goal of our article is to provide a transparent, robust, and computationally feasible statistica...
In linear mixed-effects modelling of experiments, estimation of variance components, prediction of r...
In linear mixed-effects modelling of experiments, estimation of variance components, prediction of r...