A mixture model approach is developed that simultaneously estimates the posterior membership probabilities of observations to a number of unobservable groups or latent classes, and the parameters of a generalized linear model which relates the observations, distributed according to some member of the exponential family, to a set of specified covariates within each Class. We demonstrate how this approach handles many of the existing latent class regression procedures as special cases, as well as a host of other parametric specifications in the exponential family heretofore not mentioned in the latent class literature. As such we generalize the McCullagh and Nelder approach to a latent class framework. The parameters are estimated using maxim...
Latent class analysis has been used in a wide variety of research contexts. One of the attractive fe...
Generalized linear models have become a standard technique in the statistical modelling toolbox for ...
This work focuses on generalized linear mixed models (GL2M). In these models, considering a gaussian...
Abstract: A mixture model approach is developed that simultaneously estimates the posterior membersh...
A mixture model approach is developed that simultaneously estimates the posterior membership probabi...
Expectation-maximization (EM) algorithm has been used to maximize the likelihood function or posteri...
We present an hierarchical Bayes approach to modeling parameter heterogeneity in generalized linear ...
The mixture of generalised linear models (MGLM) requires knowledge about each mixture component’s sp...
This paper presents a new approach to estimating mixture models based on a recent inference principl...
Finite mixtures of linear mixed models are increasily applied in differentareas of application. They...
The technique of iterative weighted linear regression can be used to obtain maximum likelihood estim...
This paper introduces a new approach, based on dependent univariate GLMs, for fitting multivariate m...
We propose a maximum likelihood framework for estimating finite mixtures of multivariate regression ...
Latent class methodology has been used extensively in market research. In this approach, segment mem...
Two mixture distribution fitting methods based on maximizing the likelihood using generalized lambda...
Latent class analysis has been used in a wide variety of research contexts. One of the attractive fe...
Generalized linear models have become a standard technique in the statistical modelling toolbox for ...
This work focuses on generalized linear mixed models (GL2M). In these models, considering a gaussian...
Abstract: A mixture model approach is developed that simultaneously estimates the posterior membersh...
A mixture model approach is developed that simultaneously estimates the posterior membership probabi...
Expectation-maximization (EM) algorithm has been used to maximize the likelihood function or posteri...
We present an hierarchical Bayes approach to modeling parameter heterogeneity in generalized linear ...
The mixture of generalised linear models (MGLM) requires knowledge about each mixture component’s sp...
This paper presents a new approach to estimating mixture models based on a recent inference principl...
Finite mixtures of linear mixed models are increasily applied in differentareas of application. They...
The technique of iterative weighted linear regression can be used to obtain maximum likelihood estim...
This paper introduces a new approach, based on dependent univariate GLMs, for fitting multivariate m...
We propose a maximum likelihood framework for estimating finite mixtures of multivariate regression ...
Latent class methodology has been used extensively in market research. In this approach, segment mem...
Two mixture distribution fitting methods based on maximizing the likelihood using generalized lambda...
Latent class analysis has been used in a wide variety of research contexts. One of the attractive fe...
Generalized linear models have become a standard technique in the statistical modelling toolbox for ...
This work focuses on generalized linear mixed models (GL2M). In these models, considering a gaussian...