Mixtures of measures or distributions occur frequently in the theory and applications of probability and statistics. In the simplest case it may, for example, be reasonable to assume that one is dealing with the mixture in given proportions of a finite number of normal populations with different means or variances. The mixture parameter may also be denumerable infinite, as in the theory of sums of a random number of random variables, or continuous, as in the compound Poisson distribution. The use of finite mixture distributions, to control for unobserved heterogeneity, has become increasingly popular among those estimating dynamic discrete choice models. One of the barriers to using mixture models is that parameters that could previously b...
This paper introduces studies on mixture of two exponentiated generalized Weibull-Gompertz distribut...
The important role of finite mixture models in the statistical analysis of data is underscored by th...
Constructing estimators for the parameters of a mixture of distributions has attracted many statisti...
textabstractFinite mixture distributions are a weighted average of a ¯nite number of distributions. ...
A finite mixture of exponentiated Kumaraswamy Gompertz and exponentiated Kumaraswamy Fréchet is deve...
In this paper, we introduce maximum likelihood and Bayesian parameter estimation for the exponentiat...
The purpose of the paper is to estimate the parameters of the two-component mixture of Weibull distr...
Finite mixture models have provided a reasonable tool to model various types of observed phenomena, ...
The families of mixture distributions have a wider range of applications in different fields such as...
A new family of distributions called the mixture of the exponentiated Kumaraswamy-G (henceforth, in ...
Finite mixtures of distributions have provided a mathematical-based approach to the statistical mode...
In this article we have discussed linear mixing of two exponentiated distribution. The proposed mode...
Kumar and Shibu proposed a modified version of intervened Poisson distribution (IPD), namely the mod...
This book contains entirely new results, not to be found elsewhere. Furthermore, additional results ...
The new mixture model of the two components of the inverse Weibull and inverse Burr distributions (M...
This paper introduces studies on mixture of two exponentiated generalized Weibull-Gompertz distribut...
The important role of finite mixture models in the statistical analysis of data is underscored by th...
Constructing estimators for the parameters of a mixture of distributions has attracted many statisti...
textabstractFinite mixture distributions are a weighted average of a ¯nite number of distributions. ...
A finite mixture of exponentiated Kumaraswamy Gompertz and exponentiated Kumaraswamy Fréchet is deve...
In this paper, we introduce maximum likelihood and Bayesian parameter estimation for the exponentiat...
The purpose of the paper is to estimate the parameters of the two-component mixture of Weibull distr...
Finite mixture models have provided a reasonable tool to model various types of observed phenomena, ...
The families of mixture distributions have a wider range of applications in different fields such as...
A new family of distributions called the mixture of the exponentiated Kumaraswamy-G (henceforth, in ...
Finite mixtures of distributions have provided a mathematical-based approach to the statistical mode...
In this article we have discussed linear mixing of two exponentiated distribution. The proposed mode...
Kumar and Shibu proposed a modified version of intervened Poisson distribution (IPD), namely the mod...
This book contains entirely new results, not to be found elsewhere. Furthermore, additional results ...
The new mixture model of the two components of the inverse Weibull and inverse Burr distributions (M...
This paper introduces studies on mixture of two exponentiated generalized Weibull-Gompertz distribut...
The important role of finite mixture models in the statistical analysis of data is underscored by th...
Constructing estimators for the parameters of a mixture of distributions has attracted many statisti...