Bivariate count data arise in several different disciplines (epidemiology, marketing, sports statistics just to name a few) and the bivariate Poisson distribution being a generalization of the Poisson distribution plays an important role in modelling such data. In the present paper we present a Bayesian estimation approach for the parameters of the bivariate Poisson model and provide the posterior distributions in closed forms. It is shown that the joint posterior distributions are finite mixtures of conditionally independent gamma distributions for which their full form can be easily deduced by a recursively updating scheme. Thus, the need of applying computationally demanding MCMC schemes for Bayesian inference in such models will be remo...
The analysis of bivariate data can be found in several areas of knowledge, when the data of interest...
A unified treatment is given for a family of bivariate discrete distributions with marginals and con...
We propose modeling for Poisson processes over time, exploiting the connection of the Poisson proces...
Bivariate count data arise in several different disciplines (epidemiology, marketing, sports statist...
Multivariate count data with zero-inflation is common throughout pure and applied science. Such coun...
<p>A new distribution (the v-Poisson) and its conjugate density are introduced and explored using co...
Recently, James [L.F. James, Bayesian Poisson process partition calculus with an application to Baye...
Abstract. In many applications, we assume that two random observations x and y are generated accordi...
In recent years the applications of multivariate Poisson models have increased, mainly because of th...
In many applications, we assume that two random observations x and y are generated according to inde...
Although Bayesian nonparametric mixture models for continuous data are well developed, the literatur...
In this paper, we propose a Bayesian method for modelling count data by Poisson, binomial or negativ...
This paper is devoted to the multivariate estimation of a vector of Poisson means. A novel loss func...
Several bivariate beta distributions have been proposed in the literature. Inparticular, Olkin and L...
Inference for bivariate distributions with fixed marginals is very important in applications. When a...
The analysis of bivariate data can be found in several areas of knowledge, when the data of interest...
A unified treatment is given for a family of bivariate discrete distributions with marginals and con...
We propose modeling for Poisson processes over time, exploiting the connection of the Poisson proces...
Bivariate count data arise in several different disciplines (epidemiology, marketing, sports statist...
Multivariate count data with zero-inflation is common throughout pure and applied science. Such coun...
<p>A new distribution (the v-Poisson) and its conjugate density are introduced and explored using co...
Recently, James [L.F. James, Bayesian Poisson process partition calculus with an application to Baye...
Abstract. In many applications, we assume that two random observations x and y are generated accordi...
In recent years the applications of multivariate Poisson models have increased, mainly because of th...
In many applications, we assume that two random observations x and y are generated according to inde...
Although Bayesian nonparametric mixture models for continuous data are well developed, the literatur...
In this paper, we propose a Bayesian method for modelling count data by Poisson, binomial or negativ...
This paper is devoted to the multivariate estimation of a vector of Poisson means. A novel loss func...
Several bivariate beta distributions have been proposed in the literature. Inparticular, Olkin and L...
Inference for bivariate distributions with fixed marginals is very important in applications. When a...
The analysis of bivariate data can be found in several areas of knowledge, when the data of interest...
A unified treatment is given for a family of bivariate discrete distributions with marginals and con...
We propose modeling for Poisson processes over time, exploiting the connection of the Poisson proces...