Lifecourse trajectories of clinical or anthropological attributes are useful for identifying how our early-life experiences influence later-life morbidity and mortality. Researchers often use growth mixture models (GMMs) to estimate such phenomena. It is common to place constrains on the random part of the GMM to improve parsimony or to aid convergence, but this can lead to an autoregressive structure that distorts the nature of the mixtures and subsequent model interpretation. This is especially true if changes in the outcome within individuals are gradual compared with the magnitude of differences between individuals. This is not widely appreciated, nor is its impact well understood. Using repeat measures of body mass index (BMI) for 1528...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
An important limitation of conventional latent-growth modeling (LGM) is that it assumes that all ind...
From the statistical learning perspective, this paper shows a new direction for the use of growth mi...
The number of longitudinal studies has increased steadily in various social science disciplines over...
Growth mixture modeling (GMM) is a methodological tool used to represent heterogeneity in longitudin...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
Growth mixture modeling (GMM) is a methodological tool used to represent heterogeneity in longitudin...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
An important limitation of conventional latent-growth modeling (LGM) is that it assumes that all ind...
From the statistical learning perspective, this paper shows a new direction for the use of growth mi...
The number of longitudinal studies has increased steadily in various social science disciplines over...
Growth mixture modeling (GMM) is a methodological tool used to represent heterogeneity in longitudin...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
Growth mixture modeling (GMM) is a methodological tool used to represent heterogeneity in longitudin...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
BACKGROUND: Growth Mixture Modeling (GMM) is commonly used to group individuals on their development...
An important limitation of conventional latent-growth modeling (LGM) is that it assumes that all ind...
From the statistical learning perspective, this paper shows a new direction for the use of growth mi...