We discuss prediction of random effects and of expected responses in multilevel generalized linear models. Prediction of random effects is useful for instance in small area estimation and disease mapping, effectiveness studies and model diagnostics. Prediction of expected responses is useful for planning, model interpretation and diagnostics. For prediction of random effects, we concentrate on empirical Bayes prediction and discuss three different kinds of standard errors; the posterior standard deviation and the marginal prediction error standard deviation (comparative standard errors) and the marginal sampling standard deviation (diagnostic standard error). Analytical expressions are available only for linear models and are provided in an...
This book is concerned with the use of generalized linear models for univariate and multivariate reg...
Random intercept models are linear mixed models (LMM) including error and intercept random effects. ...
Multilevel modeling is an increasingly popular technique for analyzing hierarchial data. We consider...
We discuss prediction of random effects and of expected responses in multilevel generalized linear m...
The purpose of this article is to present a new method to predict the response variable of an observ...
In longitudinal data analysis, the introduction of random effects provides statisticians with a conv...
Background: Random effects are commonly modeled in multilevel, longitudinal, and latent-variable set...
Since their introduction in 1972, generalized linear models (GLMs) have proven useful in the general...
Projection predictive inference is a decision theoretic Bayesian approach that decouples model estim...
Multilevel modeling is an increasingly popular technique for analyzing hierarchical data. This artic...
Many statistical analyses are performed by means of a regression model. These models investigate the...
In the framework of Mixed Models, it is often of interest to provide an estimate of the Q3 uncertain...
[Abstract]: This thesis investigates the prediction distributions of future response(s), conditi...
The prediction distributions of the future responses, conditional on the observed responses, from th...
Hierarchical generalized linear models are often used to fit random effects models. However, attenti...
This book is concerned with the use of generalized linear models for univariate and multivariate reg...
Random intercept models are linear mixed models (LMM) including error and intercept random effects. ...
Multilevel modeling is an increasingly popular technique for analyzing hierarchial data. We consider...
We discuss prediction of random effects and of expected responses in multilevel generalized linear m...
The purpose of this article is to present a new method to predict the response variable of an observ...
In longitudinal data analysis, the introduction of random effects provides statisticians with a conv...
Background: Random effects are commonly modeled in multilevel, longitudinal, and latent-variable set...
Since their introduction in 1972, generalized linear models (GLMs) have proven useful in the general...
Projection predictive inference is a decision theoretic Bayesian approach that decouples model estim...
Multilevel modeling is an increasingly popular technique for analyzing hierarchical data. This artic...
Many statistical analyses are performed by means of a regression model. These models investigate the...
In the framework of Mixed Models, it is often of interest to provide an estimate of the Q3 uncertain...
[Abstract]: This thesis investigates the prediction distributions of future response(s), conditi...
The prediction distributions of the future responses, conditional on the observed responses, from th...
Hierarchical generalized linear models are often used to fit random effects models. However, attenti...
This book is concerned with the use of generalized linear models for univariate and multivariate reg...
Random intercept models are linear mixed models (LMM) including error and intercept random effects. ...
Multilevel modeling is an increasingly popular technique for analyzing hierarchial data. We consider...