The choice of an appropriate family of linear models for the analysis of longitudinal data is often a matter of concern for practitioners. To attenuate such difficulties, we discuss some issues that emerge when analyzing this type of data via a practical example involving pretest–posttest longitudinal data. In particular, we consider log-normal linear mixed models (LNLMM), generalized linear mixed models (GLMM), and models based on generalized estimating equations (GEE). We show how some special features of the data, like a nonconstant coefficient of variation, may be handled in the three approaches and evaluate their performance with respect to the magnitude of standard errors of interpretable and comparable parameters. We also show how di...
Although different methods are available for the analyses of longitudinal data, analyses based on ge...
[[abstract]]Longitudinal categorical data are commonly applied in a variety of fields and are freque...
Objectives. In case of positive and skewed data, the most common approach is to fit a linear model t...
The choice of an appropriate family of linear models for the analysis of longitudinal data is often ...
The most common analysis used for binary data is generalised linear model (GLM) with either a binom...
This paperback edition is a reprint of the 2000 edition. This book provides a comprehensive treatmen...
Many approaches are available for the analysis of continuous longitudinal data. Over the last couple...
Abstract. A nonparametric smoothing method for assessing the adequacy of generalized linear mixed mo...
[[abstract]]The generalized estimation equation (GEE) method, one of the generalized linear models f...
This paper proposes an extension of generalized linear models to the analysis of longitudinal data. ...
This book covers a wide variety of statistical techniques for longitudinal data analysis. The author...
In the health and social sciences, longitudinal data have often been analyzed without taking into ac...
This project discusses the Generalized Estimating Equation (GEE) model and its application for longi...
[[abstract]]Categorical longitudinal data are frequently applied in a variety of fields, and are com...
[[abstract]]Longitudinal study has become one of the most commonly adopted designs in medical resear...
Although different methods are available for the analyses of longitudinal data, analyses based on ge...
[[abstract]]Longitudinal categorical data are commonly applied in a variety of fields and are freque...
Objectives. In case of positive and skewed data, the most common approach is to fit a linear model t...
The choice of an appropriate family of linear models for the analysis of longitudinal data is often ...
The most common analysis used for binary data is generalised linear model (GLM) with either a binom...
This paperback edition is a reprint of the 2000 edition. This book provides a comprehensive treatmen...
Many approaches are available for the analysis of continuous longitudinal data. Over the last couple...
Abstract. A nonparametric smoothing method for assessing the adequacy of generalized linear mixed mo...
[[abstract]]The generalized estimation equation (GEE) method, one of the generalized linear models f...
This paper proposes an extension of generalized linear models to the analysis of longitudinal data. ...
This book covers a wide variety of statistical techniques for longitudinal data analysis. The author...
In the health and social sciences, longitudinal data have often been analyzed without taking into ac...
This project discusses the Generalized Estimating Equation (GEE) model and its application for longi...
[[abstract]]Categorical longitudinal data are frequently applied in a variety of fields, and are com...
[[abstract]]Longitudinal study has become one of the most commonly adopted designs in medical resear...
Although different methods are available for the analyses of longitudinal data, analyses based on ge...
[[abstract]]Longitudinal categorical data are commonly applied in a variety of fields and are freque...
Objectives. In case of positive and skewed data, the most common approach is to fit a linear model t...