We present a novel method for the estimation of variance parameters in generalised linear mixed models. The method has its roots in Harville (1977)'s work, but it is able to deal with models that have a precision matrix for the random-effect vector that is linear in the inverse of the variance parameters (i.e., the precision parameters). We call the method SOP (Separation of Overlapping Precision matrices). SOP is based on applying the method of successive approximations to easy-to-compute estimate updates of the variance parameters. These estimate updates have an appealing form: they are the ratio of a (weighted) sum of squares to a quantity related to effective degrees of freedom. We provide the sufficient and necessary conditions for the...
We study a special class of misspecified generalized linear models, where the true model is a mixed ...
Thesis (M.Sc.)-University of Natal, Durban, 2004.Generalized linear mixed models (GLMMs) accommodate...
Recent work by Reiss and Ogden provides a theoretical basis for sometimes preferring restricted maxi...
We present a novel method for the estimation of variance parameters in generalised linear mixed mode...
We present a novel method for the estimation of variance parameters in generalised linear mixed mode...
Non-linear relationships are accommodated in a regression model using smoothing functions. Interact...
A new computational algorithm for estimating the smoothing parameters of a multidimensional penalize...
A new computational algorithm for estimating the smoothing parameters of a multidimensional penalize...
In small samples it is well known that the standard methods for estimating variance components in a ...
Nonparametric regression models continue to receive more attention and appreciation with the advance...
In small samples it is well known that the standard methods for estimating variance components in a ...
Linear mixed models are a powerful inferential tool in modern statistics and have a wide range of ap...
AbstractThe mixed model of analysis of variance is a linear model in which some terms that would oth...
Semiparametric mixed model analysis benefits from variability estimates such as standard errors of e...
AbstractIn view of the cumbersome and often intractable numerical integrations required for a full l...
We study a special class of misspecified generalized linear models, where the true model is a mixed ...
Thesis (M.Sc.)-University of Natal, Durban, 2004.Generalized linear mixed models (GLMMs) accommodate...
Recent work by Reiss and Ogden provides a theoretical basis for sometimes preferring restricted maxi...
We present a novel method for the estimation of variance parameters in generalised linear mixed mode...
We present a novel method for the estimation of variance parameters in generalised linear mixed mode...
Non-linear relationships are accommodated in a regression model using smoothing functions. Interact...
A new computational algorithm for estimating the smoothing parameters of a multidimensional penalize...
A new computational algorithm for estimating the smoothing parameters of a multidimensional penalize...
In small samples it is well known that the standard methods for estimating variance components in a ...
Nonparametric regression models continue to receive more attention and appreciation with the advance...
In small samples it is well known that the standard methods for estimating variance components in a ...
Linear mixed models are a powerful inferential tool in modern statistics and have a wide range of ap...
AbstractThe mixed model of analysis of variance is a linear model in which some terms that would oth...
Semiparametric mixed model analysis benefits from variability estimates such as standard errors of e...
AbstractIn view of the cumbersome and often intractable numerical integrations required for a full l...
We study a special class of misspecified generalized linear models, where the true model is a mixed ...
Thesis (M.Sc.)-University of Natal, Durban, 2004.Generalized linear mixed models (GLMMs) accommodate...
Recent work by Reiss and Ogden provides a theoretical basis for sometimes preferring restricted maxi...