Consider a generalized linear model with a canonical link function, containing both fixed and random effects. In this paper, we consider inference about the fixed effects based on a conditional likelihood function. It is shown that this conditional likelihood function is valid for any distribution of the random effects and, hence, the resulting inferences about the fixed effects are insensitive to misspecification of the random effects distribution. Inferences based on the conditional likelihood are compared to those based on the likelihood function of the mixed effects model
We consider generalized linear mixed models in which random effects are free of parametric distribut...
This paper presents the techniques of likelihood prediction for the generalized linear mixed models....
Mixed linear models are commonly used in repeated measures studies. They account for the dependence ...
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...
Residual maximum likelihood (REML) estimation is often preferred to maximum likelihood estimation as...
The goodness-of-fit of the distribution of random effects in a generalized linear mixed model is ass...
We consider the situation where the random effects in a generalized linear mixed model may be correl...
Inference in mixed models is often based on the marginal distribution obtained from integrating out ...
Since their introduction in 1972, generalized linear models (GLMs) have proven useful in the general...
The R package glmm enables likelihood-based inference for generalized linear mixed models with a can...
Generalized linear mixed-effect models are widely used for the analysis of correlated non-Gaussian d...
The present article offers a certain unifying approach to time series regression modelling by combin...
AbstractLin and Zhang (J. Roy. Statist. Soc. Ser. B 61 (1999) 381) proposed the generalized additive...
Summary. The relationship between a primary endpoint and features of longitudinal profiles of a cont...
We consider generalized linear mixed models in which random effects are free of parametric distribut...
This paper presents the techniques of likelihood prediction for the generalized linear mixed models....
Mixed linear models are commonly used in repeated measures studies. They account for the dependence ...
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...
Residual maximum likelihood (REML) estimation is often preferred to maximum likelihood estimation as...
The goodness-of-fit of the distribution of random effects in a generalized linear mixed model is ass...
We consider the situation where the random effects in a generalized linear mixed model may be correl...
Inference in mixed models is often based on the marginal distribution obtained from integrating out ...
Since their introduction in 1972, generalized linear models (GLMs) have proven useful in the general...
The R package glmm enables likelihood-based inference for generalized linear mixed models with a can...
Generalized linear mixed-effect models are widely used for the analysis of correlated non-Gaussian d...
The present article offers a certain unifying approach to time series regression modelling by combin...
AbstractLin and Zhang (J. Roy. Statist. Soc. Ser. B 61 (1999) 381) proposed the generalized additive...
Summary. The relationship between a primary endpoint and features of longitudinal profiles of a cont...
We consider generalized linear mixed models in which random effects are free of parametric distribut...
This paper presents the techniques of likelihood prediction for the generalized linear mixed models....
Mixed linear models are commonly used in repeated measures studies. They account for the dependence ...