Abstract: This paper considers prediction intervals for a future observation in the context of mixed linear models. For such prediction problems, it is reasonable to assume that the future observation is independent of the current ones. Our approach is distribution-free, that is, we do not assume that the distributions of the random effects and errors are normal or specified up to a finite number of parameters. We show that for standard mixed linear models, a simple method based on the (regression) residuals works well for constructing prediction intervals. For nonstandard mixed linear models, however, a more complicated method may have to be used, based on estimation of the distribution of the random effects. Simulation studies compare pre...
In the framework of Mixed Models, it is often of interest to provide an estimate of the Q3 uncertain...
Suppose upper records were observed from a X-sequence of iid continuous random variables, and that a...
The linear mixed model (LMM) is a popular statistical model for the analysis of longitudinal data. H...
Three well known methods for constructing prediction intervals in a generalized linear mixed model (...
In applications of linear mixed-effects models, experimenters often desire uncertainty quantificatio...
Following estimation of effects from a linear mixed model, it is often useful to form predicted valu...
Empirical best linear unbiased prediction (EBLUP) method uses a linear mixed model in combining info...
A major difficulty in applying a measurement error model is that one is required to have additional ...
This paper investigates one-step-ahead prediction intervals for normal and non-normal variables. We ...
The problem of prediction is revisited with a view towards going beyond the typical nonparametric se...
<p>Making predictions of future realized values of random variables based on currently available dat...
Empirical prediction intervals are constructed based on the distribution of previous out-of-sample f...
In the framework of Mixed Models, it is often of interest to provide an es- timate of the uncertaint...
In the framework of Mixed Models, it is often of interest to provide an estimate of the uncertainty ...
Graduation date:1986Prediction intervals for an outcome of a sufficient statistic, T[subscript y], a...
In the framework of Mixed Models, it is often of interest to provide an estimate of the Q3 uncertain...
Suppose upper records were observed from a X-sequence of iid continuous random variables, and that a...
The linear mixed model (LMM) is a popular statistical model for the analysis of longitudinal data. H...
Three well known methods for constructing prediction intervals in a generalized linear mixed model (...
In applications of linear mixed-effects models, experimenters often desire uncertainty quantificatio...
Following estimation of effects from a linear mixed model, it is often useful to form predicted valu...
Empirical best linear unbiased prediction (EBLUP) method uses a linear mixed model in combining info...
A major difficulty in applying a measurement error model is that one is required to have additional ...
This paper investigates one-step-ahead prediction intervals for normal and non-normal variables. We ...
The problem of prediction is revisited with a view towards going beyond the typical nonparametric se...
<p>Making predictions of future realized values of random variables based on currently available dat...
Empirical prediction intervals are constructed based on the distribution of previous out-of-sample f...
In the framework of Mixed Models, it is often of interest to provide an es- timate of the uncertaint...
In the framework of Mixed Models, it is often of interest to provide an estimate of the uncertainty ...
Graduation date:1986Prediction intervals for an outcome of a sufficient statistic, T[subscript y], a...
In the framework of Mixed Models, it is often of interest to provide an estimate of the Q3 uncertain...
Suppose upper records were observed from a X-sequence of iid continuous random variables, and that a...
The linear mixed model (LMM) is a popular statistical model for the analysis of longitudinal data. H...