From the statistical learning perspective, this paper shows a new direction for the use of growth mixture modeling (GMM), a method of identifying latent subpopulations that manifest heterogeneous outcome trajectories. In the proposed approach, we utilize the benefits of the conventional use of GMM for the purpose of generating potential candidate models based on empirical model fitting, which can be viewed as unsupervised learning. We then evaluate candidate GMM models on the basis of a direct measure of success; how well the trajectory types are predicted by clinically and demographically relevant baseline features, which can be viewed as supervised learning. We examine the proposed approach focusing on a particular utility of latent traje...
Growth mixture models are often used to determine if subgroups exist within the population that foll...
This study employed Monte Carlo simulation to investigate the ability of the growth mixture model (G...
This paper proposes growth mixture modeling to assess intervention e®ects in lon-gitudinal randomize...
From the statistical learning perspective, this paper shows a new direction for the use of growth mi...
An important limitation of conventional latent-growth modeling (LGM) is that it assumes that all ind...
An important limitation of conventional latent-growth modeling (LGM) is that it assumes that all ind...
Background: An assumption in many analyses of longitudinal patient-reported outcome...
Mixture models capture heterogeneity in data by decomposing the population into latent subgroups, ea...
Mixture models capture heterogeneity in data by decomposing the population into latent subgroups, ea...
Ialongo for their insightful comments. We are also thankful for Dr. Wei Wang's generous consult...
Studies of growth patterns of longitudinal characteristics are vitally important to improve our unde...
Asparouhov for helpful comments. 1 This chapter discusses the use of growth mixture modeling to asse...
Lifecourse trajectories of clinical or anthropological attributes are useful for identifying how our...
Researchers continue to be interested in exploring the effects that covariates have on the heterogen...
Growth mixture modeling (GMM) represents a technique that is designed to capture change over time fo...
Growth mixture models are often used to determine if subgroups exist within the population that foll...
This study employed Monte Carlo simulation to investigate the ability of the growth mixture model (G...
This paper proposes growth mixture modeling to assess intervention e®ects in lon-gitudinal randomize...
From the statistical learning perspective, this paper shows a new direction for the use of growth mi...
An important limitation of conventional latent-growth modeling (LGM) is that it assumes that all ind...
An important limitation of conventional latent-growth modeling (LGM) is that it assumes that all ind...
Background: An assumption in many analyses of longitudinal patient-reported outcome...
Mixture models capture heterogeneity in data by decomposing the population into latent subgroups, ea...
Mixture models capture heterogeneity in data by decomposing the population into latent subgroups, ea...
Ialongo for their insightful comments. We are also thankful for Dr. Wei Wang's generous consult...
Studies of growth patterns of longitudinal characteristics are vitally important to improve our unde...
Asparouhov for helpful comments. 1 This chapter discusses the use of growth mixture modeling to asse...
Lifecourse trajectories of clinical or anthropological attributes are useful for identifying how our...
Researchers continue to be interested in exploring the effects that covariates have on the heterogen...
Growth mixture modeling (GMM) represents a technique that is designed to capture change over time fo...
Growth mixture models are often used to determine if subgroups exist within the population that foll...
This study employed Monte Carlo simulation to investigate the ability of the growth mixture model (G...
This paper proposes growth mixture modeling to assess intervention e®ects in lon-gitudinal randomize...