The purpose of this study is to provide guidance on a process for including latent class predictors in regression mixture models. We first examine the performance of current practice for using the 1-step and 3-step approaches where the direct covariate effect on the outcome is omitted. None of the approaches show adequate estimates of model parameters. Given that Step 1 of the 3-step approach shows adequate results in class enumeration, we suggest using an alternative approach: (a) decide the number of latent classes without predictors of latent classes, and (b) bring the latent class predictors into the model with the inclusion of hypothesized direct covariate effects. Our simulations show that this approach leads to good estimates for all...
For mixture models, frequently there can be many potential class pre-dictors. In this note we descri...
This series of simulation studies was designed to assess the impact of misspecifications of the late...
Mixture modeling is a widely applied data analysis technique used to identify unobserved heterogenei...
The purpose of this study is to provide guidance on a process for including latent class predictors ...
Regression mixture models are increasingly used as an exploratory approach to identify heterogeneity...
Conventional regression analysis is typically used in educational research. Usually such an analysis...
This paper discusses alternatives to single-step mixture modeling. A 3-step method for latent class ...
This paper discusses alternatives to single-step mixture modeling. A 3-step method for latent class ...
Finite mixture models have come to play a very prominent role in modelling data. The finite mixture ...
Abstract: Finite mixture models have come to play a very prominent role in modelling data. The finit...
This paper describes and contrasts two useful ways to employ a latent class variable as a mixture va...
This study focused on understanding how several data characteristics associated with the investigati...
Moderation analyses with a latent class variable allows researchers to study relations among exogeno...
Factor mixture modeling is an increasingly popular method used in applied research settings that com...
SUMMARY. This paper discusses the analysis of an extended finite mixture model where the latent clas...
For mixture models, frequently there can be many potential class pre-dictors. In this note we descri...
This series of simulation studies was designed to assess the impact of misspecifications of the late...
Mixture modeling is a widely applied data analysis technique used to identify unobserved heterogenei...
The purpose of this study is to provide guidance on a process for including latent class predictors ...
Regression mixture models are increasingly used as an exploratory approach to identify heterogeneity...
Conventional regression analysis is typically used in educational research. Usually such an analysis...
This paper discusses alternatives to single-step mixture modeling. A 3-step method for latent class ...
This paper discusses alternatives to single-step mixture modeling. A 3-step method for latent class ...
Finite mixture models have come to play a very prominent role in modelling data. The finite mixture ...
Abstract: Finite mixture models have come to play a very prominent role in modelling data. The finit...
This paper describes and contrasts two useful ways to employ a latent class variable as a mixture va...
This study focused on understanding how several data characteristics associated with the investigati...
Moderation analyses with a latent class variable allows researchers to study relations among exogeno...
Factor mixture modeling is an increasingly popular method used in applied research settings that com...
SUMMARY. This paper discusses the analysis of an extended finite mixture model where the latent clas...
For mixture models, frequently there can be many potential class pre-dictors. In this note we descri...
This series of simulation studies was designed to assess the impact of misspecifications of the late...
Mixture modeling is a widely applied data analysis technique used to identify unobserved heterogenei...