Individual-specific, time-constant, random effects are often introduced in model specification to account for dependence and/or omitted covariates in regression models for longitudinal data. This approach has been frequently criticized as it would not be robust to the presence of correlation between the observed and the unobserved covariates. Often, this is felt as a reason to chooose the fixed effect estimator instead. Starting from the so-called correlated effect approach, we argue that the conditional random effect distribution may be estimated non-parametrically by using a discrete distribution, leading to a general solution to the problem. The effectivenes of the proposed approach is shown via a large scale simulation study
We consider the situation where the random effects in a generalized linear mixed model may be correl...
In survival analysis, the most frequently used parametric survival models are the exponential and th...
We propose a regression method for the estimation of conditional quantiles of a continuous response ...
Random-effects modeling is one of the several alternative approaches to deal with dependent observat...
In longitudinal studies or clustered designs, observations for each subject or cluster are dependent...
Longitudinal data arise frequently in many studies where measurements are obtained from a subject r...
We describe a mixed-effects model for non-negative continuous cross-sectional data in a two-part mod...
Summary. The relationship between a primary endpoint and features of longitudinal profiles of a cont...
Longitudinal studies are often conducted to explore the cohort and age effects in many scientific ar...
Generalized linear mixed-effect models are widely used for the analysis of correlated non-Gaussian d...
The authors consider regression analysis for binary data collected repeatedly over time on members o...
In longitudinal data analysis, the introduction of random effects provides statisticians with a conv...
In longitudinal studies where subjects are measured repeatedly, the effect strength of covariates ma...
In longitudinal studies, subjects may be lost to follow up and, thus, present incomplete response se...
A method is presented for flexibly modelling longitudinal data that provides insight to a central qu...
We consider the situation where the random effects in a generalized linear mixed model may be correl...
In survival analysis, the most frequently used parametric survival models are the exponential and th...
We propose a regression method for the estimation of conditional quantiles of a continuous response ...
Random-effects modeling is one of the several alternative approaches to deal with dependent observat...
In longitudinal studies or clustered designs, observations for each subject or cluster are dependent...
Longitudinal data arise frequently in many studies where measurements are obtained from a subject r...
We describe a mixed-effects model for non-negative continuous cross-sectional data in a two-part mod...
Summary. The relationship between a primary endpoint and features of longitudinal profiles of a cont...
Longitudinal studies are often conducted to explore the cohort and age effects in many scientific ar...
Generalized linear mixed-effect models are widely used for the analysis of correlated non-Gaussian d...
The authors consider regression analysis for binary data collected repeatedly over time on members o...
In longitudinal data analysis, the introduction of random effects provides statisticians with a conv...
In longitudinal studies where subjects are measured repeatedly, the effect strength of covariates ma...
In longitudinal studies, subjects may be lost to follow up and, thus, present incomplete response se...
A method is presented for flexibly modelling longitudinal data that provides insight to a central qu...
We consider the situation where the random effects in a generalized linear mixed model may be correl...
In survival analysis, the most frequently used parametric survival models are the exponential and th...
We propose a regression method for the estimation of conditional quantiles of a continuous response ...