In many scientific fields, researchers are concerned with multivariate random variables. Although quantities measured on a continuous scale are more frequent, nevertheless multivariate count data often arise in several contexts (statistical process control, epidemiology, failure and reliability analysis, etc). Such data are frequently modelled through the multivariate Poisson distribution, based on a general multivariate reduction scheme, which however suffers from some practical limits. Various methods have been proposed for constructing new alternative multivariate discrete random variables that can be used as viable alternatives. One of the most straightforward is that based on joining arbitrary univariate discrete distributions through ...
Copulas offer interesting insights into the dependence structures between the distributions of rando...
Copulas offer interesting insights into the dependence structures between the distributions of rando...
Copulas offer interesting insights into the dependence structures between the distributions of rando...
In this paper, we propose a new bivariate geometric model, derived by linking two univariate geometr...
The modeling of joint probability distributions of correlated variables and the evaluation of reliab...
Bivariate Poisson models are appropriate for modeling paired count data. However the bivariate Pois...
In recent years, the construction of bivariate (and multivariate) discrete distributions has attract...
Bivariate Poisson models are appropriate for modelling paired count data. However, the bivariate Poi...
A class of bivariate integer-valued time series models was constructed via copula theory. Each serie...
A copula-based method is presented to investigate the impact of copulas for modeling bivariate distr...
Bivariate Poisson models are appropriate for modelling paired count data. However, the bivariate Po...
In this research we introduce a new class of multivariate probability models to the marketing litera...
The first part of this paper reviews the properties of bivariate dependence measures as Spearman’s r...
Stochastic models for correlated count data have been attracting a lot of interest in the recent yea...
International audienceCopulas are a useful tool to model multivariate distributions. While there exi...
Copulas offer interesting insights into the dependence structures between the distributions of rando...
Copulas offer interesting insights into the dependence structures between the distributions of rando...
Copulas offer interesting insights into the dependence structures between the distributions of rando...
In this paper, we propose a new bivariate geometric model, derived by linking two univariate geometr...
The modeling of joint probability distributions of correlated variables and the evaluation of reliab...
Bivariate Poisson models are appropriate for modeling paired count data. However the bivariate Pois...
In recent years, the construction of bivariate (and multivariate) discrete distributions has attract...
Bivariate Poisson models are appropriate for modelling paired count data. However, the bivariate Poi...
A class of bivariate integer-valued time series models was constructed via copula theory. Each serie...
A copula-based method is presented to investigate the impact of copulas for modeling bivariate distr...
Bivariate Poisson models are appropriate for modelling paired count data. However, the bivariate Po...
In this research we introduce a new class of multivariate probability models to the marketing litera...
The first part of this paper reviews the properties of bivariate dependence measures as Spearman’s r...
Stochastic models for correlated count data have been attracting a lot of interest in the recent yea...
International audienceCopulas are a useful tool to model multivariate distributions. While there exi...
Copulas offer interesting insights into the dependence structures between the distributions of rando...
Copulas offer interesting insights into the dependence structures between the distributions of rando...
Copulas offer interesting insights into the dependence structures between the distributions of rando...