This paper explores the asymptotic distribution of the restricted maximum likelihood estimator of the variance components in a general mixed model. Restricting attention to hierarchical models, central limit theorems are obtained using elementary arguments with only mild conditions on the covariates in the fixed part of the model and without having to assume that the data are either normally or spherically symmetrically distributed. Further, the REML and maximum likelihood estimators are shown to be asymptotically equivalent in this general framework, and the asymptotic distribution of the weighted least squares estimator (based on the REML estimator) of the fixed effect parameters is derived. Copyright � 1994, Wiley Blackwell. All rights r...
Residual maximum likelihood (REML) estimation is a popular method of estimation for variance paramet...
Residual maximum likelihood (REML) estimation is often preferred to maximum likelihood estimation as...
This dissertation was born out of a need for general and numerically feasible procedures for inferen...
AbstractRestricted maximum likelihood (REML) estimation is a method employed to estimate variance-co...
AbstractThe restricted maximum likelihood (REML) procedure is useful for inferences about variance c...
Definitions of robust maximum likelihood (robust ML) and robust restricted maximum likelihood (robus...
We aim to promote the use of the modified profile likelihood function for estimating the variance pa...
The existing Restricted Maximum Likelihood Method of obtaining variance component estimates in gener...
We study behavior of the restricted maximum likelihood (REML) estimator under a misspecifie...
The goal of our article is to provide a transparent, robust, and computationally feasible statistica...
Mixed linear models are used to analyze data in many settings. These models have in most cases a mul...
In this paper, we develop likelihood-based methods for making inferences about the components of var...
Mixed linear models are used to analyse data in many settings. These models have in most cases a mul...
Maximum likelihood (ML) estimation for linear models with longitudinal data under inequality restric...
Restricted maximum likelihood (REML) is now well established as a method for estimating the paramete...
Residual maximum likelihood (REML) estimation is a popular method of estimation for variance paramet...
Residual maximum likelihood (REML) estimation is often preferred to maximum likelihood estimation as...
This dissertation was born out of a need for general and numerically feasible procedures for inferen...
AbstractRestricted maximum likelihood (REML) estimation is a method employed to estimate variance-co...
AbstractThe restricted maximum likelihood (REML) procedure is useful for inferences about variance c...
Definitions of robust maximum likelihood (robust ML) and robust restricted maximum likelihood (robus...
We aim to promote the use of the modified profile likelihood function for estimating the variance pa...
The existing Restricted Maximum Likelihood Method of obtaining variance component estimates in gener...
We study behavior of the restricted maximum likelihood (REML) estimator under a misspecifie...
The goal of our article is to provide a transparent, robust, and computationally feasible statistica...
Mixed linear models are used to analyze data in many settings. These models have in most cases a mul...
In this paper, we develop likelihood-based methods for making inferences about the components of var...
Mixed linear models are used to analyse data in many settings. These models have in most cases a mul...
Maximum likelihood (ML) estimation for linear models with longitudinal data under inequality restric...
Restricted maximum likelihood (REML) is now well established as a method for estimating the paramete...
Residual maximum likelihood (REML) estimation is a popular method of estimation for variance paramet...
Residual maximum likelihood (REML) estimation is often preferred to maximum likelihood estimation as...
This dissertation was born out of a need for general and numerically feasible procedures for inferen...