An often-cited fact regarding mixing or mixture distributions is that their density functions are able to approximate the density function of any unknown distribution to arbitrary degrees of accuracy, provided that the mixing or mixture distribution is sufficiently complex. This fact is often not made concrete. We investigate and review theorems that provide approximation bounds for mixing distributions. Connections between the approximation bounds of mixing distributions and estimation bounds for the maximum likelihood estimator of finite mixtures of location-scale distributions are reviewed
This thesis studies two types of research problems under finite mixture models. The first type is mi...
The consistent estimation of mixture complexity is of fundamental importance in many applications of...
The parameters of a finite mixture model cannot be consistently estimated when the data come from an...
Given sufficiently many components, it is often cited that finite mixture models can approximate any...
International audienceThe class of location-scale finite mixtures is of enduring interest both from ...
In this paper we focus on the problem of estimating a bounded density using a finite combination of ...
In this paper we focus on the problem of estimating a boundeddensity using a finite combination of d...
Abstract. In this note, we give necessary and sufficient conditions for a maximum-likelihood estimat...
The class of location-scale finite mixtures is of enduring interest both from applied and theoretica...
This chapter addresses the problem of recovering the mixing distribution in finite kernel mixture mo...
The problems with which we are concerned in this note are those of identifiability and strongly cons...
Abstract: This paper studies identifiability and convergence behaviors for parameters of multiple ty...
The parameters of a finite mixture model cannot be consistently estimated when the data come from an...
Abst rac t. We consider maximum likelihood estimation of finite mixture of uniform distributions. We...
Mixture models occur in numerous settings including random and fixed effects models, clustering, dec...
This thesis studies two types of research problems under finite mixture models. The first type is mi...
The consistent estimation of mixture complexity is of fundamental importance in many applications of...
The parameters of a finite mixture model cannot be consistently estimated when the data come from an...
Given sufficiently many components, it is often cited that finite mixture models can approximate any...
International audienceThe class of location-scale finite mixtures is of enduring interest both from ...
In this paper we focus on the problem of estimating a bounded density using a finite combination of ...
In this paper we focus on the problem of estimating a boundeddensity using a finite combination of d...
Abstract. In this note, we give necessary and sufficient conditions for a maximum-likelihood estimat...
The class of location-scale finite mixtures is of enduring interest both from applied and theoretica...
This chapter addresses the problem of recovering the mixing distribution in finite kernel mixture mo...
The problems with which we are concerned in this note are those of identifiability and strongly cons...
Abstract: This paper studies identifiability and convergence behaviors for parameters of multiple ty...
The parameters of a finite mixture model cannot be consistently estimated when the data come from an...
Abst rac t. We consider maximum likelihood estimation of finite mixture of uniform distributions. We...
Mixture models occur in numerous settings including random and fixed effects models, clustering, dec...
This thesis studies two types of research problems under finite mixture models. The first type is mi...
The consistent estimation of mixture complexity is of fundamental importance in many applications of...
The parameters of a finite mixture model cannot be consistently estimated when the data come from an...