Researchers in applied sciences are often concerned with multivariate random variables. In particular, multivariate discrete data often arise in many fields (statistical quality control, biostatistics, failure analysis, etc). Here we consider the discrete Weibull distribution as an alternative to the popular Poisson random variable and propose a procedure for simulating correlated discrete Weibull random variables, with marginal distributions and correlation matrix assigned by the user. The procedure indeed relies upon the gaussian copula model and an iterative algorithm for recovering the proper correlation matrix for the copula ensuring the desired correlation matrix on the discrete margins. A simulation study is presented, which empirica...
We describe a model for representing random vectors whose component random variables have arbitrary ...
A new family of copulas is introduced that provides flexible dependence structure while being tracta...
In specifying a multivariate discrete distribution via the the NORmal To Anything (NORTA) method, a ...
Researchers in applied sciences are often concerned with multivariate random variables. In particula...
Recently, a proposal for simulating correlated discrete Weibull variables has been suggested, based ...
A package for the stochastic simulation of discrete variables with assigned marginal distributions a...
A gaussian copula based procedure for generating samples from discrete random variables with prescri...
Generating correlated Poisson random variables is fundamental in many applications in the management...
Multivariate discrete data arise in many fields (statistical quality control, epidemiology, failure ...
Multivariate count data arise in many fields of applied sciences and modeling such data is a relevan...
Due to the increasing use of ordinal variables in different fields, new statistical methods for thei...
In this chapter, we review the problem of modeling correlated count data. Among the several methods ...
Includes bibliographical references (pages [50])Correlated binary data occur when measurements of tw...
We consider the problem of defining a multivariate distribution of binary variables, with given firs...
This paper presents copula functions as a method to derive bivariate distributions. Copula functions...
We describe a model for representing random vectors whose component random variables have arbitrary ...
A new family of copulas is introduced that provides flexible dependence structure while being tracta...
In specifying a multivariate discrete distribution via the the NORmal To Anything (NORTA) method, a ...
Researchers in applied sciences are often concerned with multivariate random variables. In particula...
Recently, a proposal for simulating correlated discrete Weibull variables has been suggested, based ...
A package for the stochastic simulation of discrete variables with assigned marginal distributions a...
A gaussian copula based procedure for generating samples from discrete random variables with prescri...
Generating correlated Poisson random variables is fundamental in many applications in the management...
Multivariate discrete data arise in many fields (statistical quality control, epidemiology, failure ...
Multivariate count data arise in many fields of applied sciences and modeling such data is a relevan...
Due to the increasing use of ordinal variables in different fields, new statistical methods for thei...
In this chapter, we review the problem of modeling correlated count data. Among the several methods ...
Includes bibliographical references (pages [50])Correlated binary data occur when measurements of tw...
We consider the problem of defining a multivariate distribution of binary variables, with given firs...
This paper presents copula functions as a method to derive bivariate distributions. Copula functions...
We describe a model for representing random vectors whose component random variables have arbitrary ...
A new family of copulas is introduced that provides flexible dependence structure while being tracta...
In specifying a multivariate discrete distribution via the the NORmal To Anything (NORTA) method, a ...