Mixture of binomial distributions are often considered as a flexible model for count data which can account for sources of heterogeneity in the population and also as a device to deal with exchangeable binary sequences. For instance they are routinely used in a wide range of applied context such as psychological testing as well as in industrial sampling or in toxicological experiments, just to mention some of them. Different param- eterizations are presented in order to build up a convenient methodological framework for developing a default Bayesian analysis when no parametric form of the mixing distribu- tion is assumed. This approach can be exploited for estimation and prediction purposes. Also in this paper a first attempt to investigate...
Combinatorial mixtures refers to a flexible class of models for inference on mixture distributions wh...
In this paper, we show how a complete and exact Bayesian analysis of a parametric mixture model is p...
iii Mixture distributions are typically used to model data in which each observation be-longs to one...
Mixture of binomial distributions are often considered as a flexible model for count data which can ...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...
Abstract only: Today’s data analysts and modellers are in the luxurious position of being able to mo...
A finite mixture distribution consists of the superposition of a finite number of component probabil...
7 pages, 1 article*Some Remarks on the Use of Moment Estimators for the Parameters of a Mixture of T...
Occasionally, situations arise where mixtures of two binomials with one known success parameter are ...
Finite mixtures of distributions have provided a mathematical-based approach to the statistical mode...
We present a method of generating random vectors from a distribution having an absolutely continuous...
PRIOR AND CANDIDATE MODELS IN THE BAYESIAN ANALYSIS OF FINITE MIXTURES This paper discusses the prob...
This paper describes a Bayesian approach to mixture modelling and a method based on predictive distr...
This paper discusses the problem of fitting mixture models to input data. When an input stream is an...
An important aspect of mixture modeling concerns the selection of the number of mixture components. ...
Combinatorial mixtures refers to a flexible class of models for inference on mixture distributions wh...
In this paper, we show how a complete and exact Bayesian analysis of a parametric mixture model is p...
iii Mixture distributions are typically used to model data in which each observation be-longs to one...
Mixture of binomial distributions are often considered as a flexible model for count data which can ...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...
Abstract only: Today’s data analysts and modellers are in the luxurious position of being able to mo...
A finite mixture distribution consists of the superposition of a finite number of component probabil...
7 pages, 1 article*Some Remarks on the Use of Moment Estimators for the Parameters of a Mixture of T...
Occasionally, situations arise where mixtures of two binomials with one known success parameter are ...
Finite mixtures of distributions have provided a mathematical-based approach to the statistical mode...
We present a method of generating random vectors from a distribution having an absolutely continuous...
PRIOR AND CANDIDATE MODELS IN THE BAYESIAN ANALYSIS OF FINITE MIXTURES This paper discusses the prob...
This paper describes a Bayesian approach to mixture modelling and a method based on predictive distr...
This paper discusses the problem of fitting mixture models to input data. When an input stream is an...
An important aspect of mixture modeling concerns the selection of the number of mixture components. ...
Combinatorial mixtures refers to a flexible class of models for inference on mixture distributions wh...
In this paper, we show how a complete and exact Bayesian analysis of a parametric mixture model is p...
iii Mixture distributions are typically used to model data in which each observation be-longs to one...