Identifying the number of classes in Bayesian finite mixture models is a challenging problem. Several criteria have been proposed, such as adaptations of the deviance information criterion, marginal likelihoods, Bayes factors, and reversible jump MCMC techniques. It was recently shown that in overfitted mixture models, the overfitted latent classes will asymptotically become empty under specific conditions for the prior of the class proportions. This result may be used to construct a criterion for finding the true number of latent classes, based on the removal of latent classes that have negligible proportions. Unlike some alternative criteria, this criterion can easily be implemented in complex statistical models such as latent class mixed...
PRIOR AND CANDIDATE MODELS IN THE BAYESIAN ANALYSIS OF FINITE MIXTURES This paper discusses the prob...
Factor mixture modeling is an increasingly popular method used in applied research settings that com...
Factor mixture modeling is an increasingly popular method used in applied research settings that com...
<div><p>Identifying the number of classes in Bayesian finite mixture models is a challenging problem...
Identifying the number of classes in Bayesian finite mixture models is a challenging problem. Severa...
Identifying the number of classes in Bayesian finite mixture models is a challenging problem. Severa...
Mixture modeling is a widely applied data analysis technique used to identify unobserved heterogenei...
This article evaluates a new Bayesian approach to determining the number of components in a finite m...
It is widely accepted that blindly specifying an incorrect number of latent classes may result in mi...
Two new approaches to estimate Bayes factors in a finite mixture model context are proposed. Specifi...
An important aspect of mixture modeling concerns the selection of the number of mixture components. ...
An important aspect of mixture modeling is the selection of the number of mixture components. In thi...
This paper discusses the problem of fitting mixture models to input data. When an input stream is an...
International audienceThe latent class model or multivariate multinomial mixture is a powerful appro...
Estimating the model evidence - or mariginal likelihood of the data - is a notoriously difficult tas...
PRIOR AND CANDIDATE MODELS IN THE BAYESIAN ANALYSIS OF FINITE MIXTURES This paper discusses the prob...
Factor mixture modeling is an increasingly popular method used in applied research settings that com...
Factor mixture modeling is an increasingly popular method used in applied research settings that com...
<div><p>Identifying the number of classes in Bayesian finite mixture models is a challenging problem...
Identifying the number of classes in Bayesian finite mixture models is a challenging problem. Severa...
Identifying the number of classes in Bayesian finite mixture models is a challenging problem. Severa...
Mixture modeling is a widely applied data analysis technique used to identify unobserved heterogenei...
This article evaluates a new Bayesian approach to determining the number of components in a finite m...
It is widely accepted that blindly specifying an incorrect number of latent classes may result in mi...
Two new approaches to estimate Bayes factors in a finite mixture model context are proposed. Specifi...
An important aspect of mixture modeling concerns the selection of the number of mixture components. ...
An important aspect of mixture modeling is the selection of the number of mixture components. In thi...
This paper discusses the problem of fitting mixture models to input data. When an input stream is an...
International audienceThe latent class model or multivariate multinomial mixture is a powerful appro...
Estimating the model evidence - or mariginal likelihood of the data - is a notoriously difficult tas...
PRIOR AND CANDIDATE MODELS IN THE BAYESIAN ANALYSIS OF FINITE MIXTURES This paper discusses the prob...
Factor mixture modeling is an increasingly popular method used in applied research settings that com...
Factor mixture modeling is an increasingly popular method used in applied research settings that com...