The standard mixture model, the concomitant variable mixture model, the mixture regression model and the concomitant variable mixture regression model all enable simultaneous identification and description of groups of observations. This study reviews the different ways in which dependencies among the variables involved in these models are accommodated. It is demonstrated that the standard and concomitant variable mixture models identify groups of observations and at the same time discriminate them analogous, respectively, to discriminant analysis and logistic regression. While the mixture regression model is shown to have limited use for classifying new observations. An extension of it, called the saturated mixture regression model, is sho...
This article is a (slightly) modified version of Grün and Leisch (2008a), published in the Journal ...
We describe a flexible regression model for multivariate mixed responses, where association between ...
This paper describes and contrasts two useful ways to employ a latent class variable as a mixture va...
The standard mixture model, the concomitant variable mixture model, the mixture regression model and...
The important role of finite mixture models in the statistical analysis of data is underscored by th...
Finite mixtures of distributions have provided a mathematical-based approach to the statistical mode...
Linear regression models based on finite Gaussian mixtures represent a flexible tool for the analys...
The methodological literature on mixture modeling has rapidly expanded in the past 15 years, and mix...
Summary. Generalized linear models have become a standard technique in the statistical modelling too...
In a regression analysis, suppose we suspect that there are several heterogeneous groups in the popu...
This article is a (slightly) modified version of Grün and Leisch (2008b), published in the Journal ...
Generalized linear models have become a standard technique in the statistical modelling toolbox for ...
Package flexmix provides functionality for fitting finite mixtures of regression models. The availab...
Expanding a lower-dimensional problem to a higher-dimensional space and then projecting back is ofte...
<div><p>We propose a new class of models providing a powerful unification and extension of existing ...
This article is a (slightly) modified version of Grün and Leisch (2008a), published in the Journal ...
We describe a flexible regression model for multivariate mixed responses, where association between ...
This paper describes and contrasts two useful ways to employ a latent class variable as a mixture va...
The standard mixture model, the concomitant variable mixture model, the mixture regression model and...
The important role of finite mixture models in the statistical analysis of data is underscored by th...
Finite mixtures of distributions have provided a mathematical-based approach to the statistical mode...
Linear regression models based on finite Gaussian mixtures represent a flexible tool for the analys...
The methodological literature on mixture modeling has rapidly expanded in the past 15 years, and mix...
Summary. Generalized linear models have become a standard technique in the statistical modelling too...
In a regression analysis, suppose we suspect that there are several heterogeneous groups in the popu...
This article is a (slightly) modified version of Grün and Leisch (2008b), published in the Journal ...
Generalized linear models have become a standard technique in the statistical modelling toolbox for ...
Package flexmix provides functionality for fitting finite mixtures of regression models. The availab...
Expanding a lower-dimensional problem to a higher-dimensional space and then projecting back is ofte...
<div><p>We propose a new class of models providing a powerful unification and extension of existing ...
This article is a (slightly) modified version of Grün and Leisch (2008a), published in the Journal ...
We describe a flexible regression model for multivariate mixed responses, where association between ...
This paper describes and contrasts two useful ways to employ a latent class variable as a mixture va...