Growth curve modeling (GCM) has been one of the most popular statistical methods to examine participants’ growth trajectories using longitudinal data. In spite of the popularity of GCM, little attention has been paid to the possible influence of time-specific errors, which influence all participants at each timepoint. In this article, we demonstrate that the failure to take into account such time-specific errors in GCM produces considerable inflation of type-1 error rates in statistical tests of fixed effects (e.g., coefficients for the linear and quadratic terms). We propose a GCM that appropriately incorporates time-specific errors using mixed-effects models to address the problem. We also provide an applied example to illustrate that GCM...
To test for group differences in growth trajectories in mixed (fixed and ran-dom effects) models, re...
Longitudinal measurements of human growth present special difficulties for statistical analysis, bot...
We investigate the impacts of complex sampling on point and standard error estimates in latent growt...
Growth curve modeling (GCM) has been one of the most popular statistical methods to examine partici...
Researchers often collect longitudinal data so as to model change over time in a phenomenon and for ...
The growth curve model (GCM) has been widely used in longitudinal studies and repeated measures. Mos...
In psychology, mixed-effects models and latent-curve models are both widely used to explore growth o...
The purpose of this study was to evaluate the robustness of estimated growth curve models when there...
The purpose of this study was to evaluate the robustness of estimated growth curve models when there...
The purpose of this study was to evaluate the robustness of estimated growth curve models when there...
Growth curve analysis is useful in studies with repeated measurements on experimental units. They en...
Growth-curve models are generalized multivariate analysis-of-variance models. The basic idea of the ...
Growth curve analysis is useful in studies with repeated measurements on experimental units. They en...
In this paper, we propose a method for the analysis of growth curve models when also the regressor v...
To test for group differences in growth trajectories in mixed (fixed and ran-dom effects) models, re...
To test for group differences in growth trajectories in mixed (fixed and ran-dom effects) models, re...
Longitudinal measurements of human growth present special difficulties for statistical analysis, bot...
We investigate the impacts of complex sampling on point and standard error estimates in latent growt...
Growth curve modeling (GCM) has been one of the most popular statistical methods to examine partici...
Researchers often collect longitudinal data so as to model change over time in a phenomenon and for ...
The growth curve model (GCM) has been widely used in longitudinal studies and repeated measures. Mos...
In psychology, mixed-effects models and latent-curve models are both widely used to explore growth o...
The purpose of this study was to evaluate the robustness of estimated growth curve models when there...
The purpose of this study was to evaluate the robustness of estimated growth curve models when there...
The purpose of this study was to evaluate the robustness of estimated growth curve models when there...
Growth curve analysis is useful in studies with repeated measurements on experimental units. They en...
Growth-curve models are generalized multivariate analysis-of-variance models. The basic idea of the ...
Growth curve analysis is useful in studies with repeated measurements on experimental units. They en...
In this paper, we propose a method for the analysis of growth curve models when also the regressor v...
To test for group differences in growth trajectories in mixed (fixed and ran-dom effects) models, re...
To test for group differences in growth trajectories in mixed (fixed and ran-dom effects) models, re...
Longitudinal measurements of human growth present special difficulties for statistical analysis, bot...
We investigate the impacts of complex sampling on point and standard error estimates in latent growt...