The goodness-of-fit of the distribution of random effects in a generalized linear mixed model is assessed using a conditional simulation of the random effects conditional on the observations. Provided that the specified joint model for random effects and observations is correct, the marginal distribution of the simulated random effects coincides with the assumed random effects distribution. In practice, the specified model depends on some unknown parameter which is replaced by an estimate. We obtain a correction for this by deriving the asymptotic distribution of the empirical distribution function obtained from the conditional sample of the random effects. The approach is illustrated by simulation studies and data examples. Udgivelsesdato:...
It is traditionally assumed that the random effects in mixed models follow a multivariate normal dis...
Testing that random effects are zero is difficult, because the null hypothesis restricts the corresp...
Estimation in generalized linear mixed models for non-Gaussian longitudinal data is often based on m...
The goodness-of-fit of the distribution of random effects in a generalized linear mixed model is ass...
In this paper, we develop a simple diagnostic test for the random-effects distribution in mixed mode...
Mixed models, with both random and fixed effects, are most often estimated on the assump-tion that t...
In this paper, we develop a simple diagnostic test for the random-effects distribution in mixed mode...
Inference in mixed models is often based on the marginal distribution obtained from integrating out ...
Linear mixed models and generalized linear mixed models are random-effects models widely applied to ...
Estimation in generalized linear mixed models (GLMMs) is often based on maximum likelihood theory, a...
Consider a generalized linear model with a canonical link function, containing both fixed and random...
Consider a generalized linear model with a canonical link function, containing both fixed and random...
We introduce a diagnostic test for the mixing distribution in a generalised linear mixed model. The ...
The objective of this paper is to find a simple way to test whether random effects are needed in a n...
Master's thesis in Mathematics and PhysicsThe Linear mixed effects model is based on one of the assu...
It is traditionally assumed that the random effects in mixed models follow a multivariate normal dis...
Testing that random effects are zero is difficult, because the null hypothesis restricts the corresp...
Estimation in generalized linear mixed models for non-Gaussian longitudinal data is often based on m...
The goodness-of-fit of the distribution of random effects in a generalized linear mixed model is ass...
In this paper, we develop a simple diagnostic test for the random-effects distribution in mixed mode...
Mixed models, with both random and fixed effects, are most often estimated on the assump-tion that t...
In this paper, we develop a simple diagnostic test for the random-effects distribution in mixed mode...
Inference in mixed models is often based on the marginal distribution obtained from integrating out ...
Linear mixed models and generalized linear mixed models are random-effects models widely applied to ...
Estimation in generalized linear mixed models (GLMMs) is often based on maximum likelihood theory, a...
Consider a generalized linear model with a canonical link function, containing both fixed and random...
Consider a generalized linear model with a canonical link function, containing both fixed and random...
We introduce a diagnostic test for the mixing distribution in a generalised linear mixed model. The ...
The objective of this paper is to find a simple way to test whether random effects are needed in a n...
Master's thesis in Mathematics and PhysicsThe Linear mixed effects model is based on one of the assu...
It is traditionally assumed that the random effects in mixed models follow a multivariate normal dis...
Testing that random effects are zero is difficult, because the null hypothesis restricts the corresp...
Estimation in generalized linear mixed models for non-Gaussian longitudinal data is often based on m...