The parameters of a finite mixture model cannot be consistently estimated when the data come from an embedded distribution with fewer components than that being fitted, because the distribution is represented by a subset in the parameter space, and not by a single point. Feng & McCulloch (1996) give conditions, not easily verified, under which the maximum likelihood (ML) estimator will converge to an arbitrary point in this subset. We show that the conditions can be considerably weakened. Even though embedded distributions may not be uniquely represented in the parameter space, estimators of quantities of interest, like the mean or variance of the distribution, may nevertheless actually be consistent in the conventional sense. We give a...
A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a fi...
Abstract: A finite mixture of normal distributions in both mean and variance pa-rameters is a typica...
We study uniform consistency in nonparametric mixture models as well as closely related mixture of r...
The parameters of a finite mixture model cannot be consistently estimated when the data come from an...
This thesis studies two types of research problems under finite mixture models. The first type is mi...
This thesis studies two types of research problems under finite mixture models. The first type is mi...
Abst rac t. We consider maximum likelihood estimation of finite mixture of uniform distributions. We...
Due to non-regularity of the finite mixture of normal dis-tributions in both mean and variance, the ...
In finite mixtures of location-scale distributions, if there is no constraint or penalty on the para...
The aim is to study the asymptotic behavior of estimators and tests for the components of identifiab...
The aim is to study the asymptotic behavior of estimators and tests for the components of identifiab...
Estimating the model evidence - or mariginal likelihood of the data - is a notoriously difficult tas...
Finite normal mixture models are often used to model the data coming from a population which consist...
A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a fi...
A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a fi...
A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a fi...
Abstract: A finite mixture of normal distributions in both mean and variance pa-rameters is a typica...
We study uniform consistency in nonparametric mixture models as well as closely related mixture of r...
The parameters of a finite mixture model cannot be consistently estimated when the data come from an...
This thesis studies two types of research problems under finite mixture models. The first type is mi...
This thesis studies two types of research problems under finite mixture models. The first type is mi...
Abst rac t. We consider maximum likelihood estimation of finite mixture of uniform distributions. We...
Due to non-regularity of the finite mixture of normal dis-tributions in both mean and variance, the ...
In finite mixtures of location-scale distributions, if there is no constraint or penalty on the para...
The aim is to study the asymptotic behavior of estimators and tests for the components of identifiab...
The aim is to study the asymptotic behavior of estimators and tests for the components of identifiab...
Estimating the model evidence - or mariginal likelihood of the data - is a notoriously difficult tas...
Finite normal mixture models are often used to model the data coming from a population which consist...
A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a fi...
A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a fi...
A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a fi...
Abstract: A finite mixture of normal distributions in both mean and variance pa-rameters is a typica...
We study uniform consistency in nonparametric mixture models as well as closely related mixture of r...