For analyses of longitudinal repeated-measures data, statistical methods include the random effects model, fixed effects model and the method of generalized estimating equations. We examine the assumptions that underlie these approaches to assessing covariate effects on the mean of a continuous, dichotomous or count outcome. Access to statistical software to implement these models has led to widespread application in numerous disciplines. However, careful consideration should be paid to their critical assumptions to ascertain which model might be appropriate in a given setting. To illustrate similarities and differences that might exist in empirical results, we use a study that assessed depressive symptoms in low-income pregnant women using...
In this chapter, an overview is given of different methods to analyse data from a randomised control...
This project discusses the Generalized Estimating Equation (GEE) model and its application for longi...
University of Minnesota Ph.D. disseration. June 2010. Major: Educational Psychology. Advisor: Jeffre...
This article challenges Fixed Effects (FE) modelling as the ‘default’ for time-series-cross-sectiona...
Fixed and random effects models for longitudinal data are common in sociology. Their primary advanta...
In hierarchical data structures, observational units at one level are nested within units at other l...
The generalized estimating equation (GEE) approach to the analysis of longitudinal data has many att...
A longitudinal data set is defined as a data set in which the response for each experimental unit is...
In longitudinal data analysis, the introduction of random effects provides statisticians with a conv...
Mixed-effect modeling is recommended for data with repeated measures, as often encountered in design...
Applications of classic fixed and random effects models for panel data are common in sociology and i...
Subjects often drop out of longitudinal studies prematurely, yielding unbalanced data with unequal n...
Empirical analyses in social science frequently confront quantitative data that are clustered or gro...
Much of the research in epidemiology and clinical science is based upon longitudinal designs which i...
BACKGROUND: In clinical trials a fixed effects research model assumes that the patients selected for...
In this chapter, an overview is given of different methods to analyse data from a randomised control...
This project discusses the Generalized Estimating Equation (GEE) model and its application for longi...
University of Minnesota Ph.D. disseration. June 2010. Major: Educational Psychology. Advisor: Jeffre...
This article challenges Fixed Effects (FE) modelling as the ‘default’ for time-series-cross-sectiona...
Fixed and random effects models for longitudinal data are common in sociology. Their primary advanta...
In hierarchical data structures, observational units at one level are nested within units at other l...
The generalized estimating equation (GEE) approach to the analysis of longitudinal data has many att...
A longitudinal data set is defined as a data set in which the response for each experimental unit is...
In longitudinal data analysis, the introduction of random effects provides statisticians with a conv...
Mixed-effect modeling is recommended for data with repeated measures, as often encountered in design...
Applications of classic fixed and random effects models for panel data are common in sociology and i...
Subjects often drop out of longitudinal studies prematurely, yielding unbalanced data with unequal n...
Empirical analyses in social science frequently confront quantitative data that are clustered or gro...
Much of the research in epidemiology and clinical science is based upon longitudinal designs which i...
BACKGROUND: In clinical trials a fixed effects research model assumes that the patients selected for...
In this chapter, an overview is given of different methods to analyse data from a randomised control...
This project discusses the Generalized Estimating Equation (GEE) model and its application for longi...
University of Minnesota Ph.D. disseration. June 2010. Major: Educational Psychology. Advisor: Jeffre...