Longitudinal processes in multiple domains are often theorized to be nonlinear, which poses unique statistical challenges. Empirical researchers often select a nonlinear longitudinal model by weighing how specific the model must be in terms of the nature of the nonlinearity, whether the model is computationally efficient, and whether the model provides interpretable coefficients. Latent basis growth models (LBGMs) are one method that can get around these tradeoffs: it does not require specification of any functional form; additionally, its estimation process is expeditious, and estimates are straightforward to interpret. We propose a novel specification for LBGMs that allows for (1) unequally-spaced study waves and (2) individual measuremen...
In longitudinal research, interest often centers on individual trajectories of change over time. Whe...
BACKGROUND: Longitudinal data analysis can improve our understanding of the influences on health tra...
Researchers are increasingly taking advantage of the latent growth modeling framework to evaluate co...
Longitudinal data analysis has been widely employed to examine between-individual differences in wit...
Researchers are interested in examining between-individual differences in within-individual changes....
In recent years, the use of longitudinal designs has increased appreciably and the study of change h...
Researchers continue to be interested in exploring the effects that covariates have on the heterogen...
The linear spline growth model (LSGM), which approximates complex patterns using at least two linear...
Longitudinal models have become increasingly popular in recent years because of their power to test ...
Second-order latent growth models assess longitudinal change in a latent construct, typically employ...
UnrestrictedIn 1988, McArdle identified issues modeling multivariate growth using what he termed “se...
Latent curve models (LCMs) have been used extensively to analyze longitudinal data. However, little ...
In health cohort studies, repeated measures of markers are often used to describe the natural histor...
Repeated measures and repeated events data have a hierarchical structure which can be analysed by us...
When noncompliance happens to longitudinal experiments, the randomness for drawing causal inferences...
In longitudinal research, interest often centers on individual trajectories of change over time. Whe...
BACKGROUND: Longitudinal data analysis can improve our understanding of the influences on health tra...
Researchers are increasingly taking advantage of the latent growth modeling framework to evaluate co...
Longitudinal data analysis has been widely employed to examine between-individual differences in wit...
Researchers are interested in examining between-individual differences in within-individual changes....
In recent years, the use of longitudinal designs has increased appreciably and the study of change h...
Researchers continue to be interested in exploring the effects that covariates have on the heterogen...
The linear spline growth model (LSGM), which approximates complex patterns using at least two linear...
Longitudinal models have become increasingly popular in recent years because of their power to test ...
Second-order latent growth models assess longitudinal change in a latent construct, typically employ...
UnrestrictedIn 1988, McArdle identified issues modeling multivariate growth using what he termed “se...
Latent curve models (LCMs) have been used extensively to analyze longitudinal data. However, little ...
In health cohort studies, repeated measures of markers are often used to describe the natural histor...
Repeated measures and repeated events data have a hierarchical structure which can be analysed by us...
When noncompliance happens to longitudinal experiments, the randomness for drawing causal inferences...
In longitudinal research, interest often centers on individual trajectories of change over time. Whe...
BACKGROUND: Longitudinal data analysis can improve our understanding of the influences on health tra...
Researchers are increasingly taking advantage of the latent growth modeling framework to evaluate co...