In many cases of modeling bivariate count data, the interest lies on studying the association rather than the marginal properties. We form a flexible regression copula-based model where covariates are used not only for the marginal but also for the copula parameters. Since copula measures the association, the use of covariates in its parameters allow for direct modeling of association. A real-data application related to transaction market basket data is used. Our goal is to refine and understand whether the association between the number of purchases of certain product categories depends on particular demographic customers’ characteristics. Such information is important for decision making for marketing purposes
The assumption of multivariate normality underlying the Hotelling (Formula presented.) chart is ofte...
In this project we introduce the use of copulas for dealing with residual dependencies in item respo...
Copulas are mathematical objects that fully capture the dependence structure among random variables ...
In many cases of modeling bivariate count data, the interest lies on studying the association rather...
Multivariate count data occur in several different disciplines. However, existing models do not offe...
In this research we introduce a new class of multivariate probability models to the marketing litera...
Modeling bivariate (or multivariate) count data has received increased interest in recent years. The...
In this review paper we collect several results about copula-based models, especially concerning reg...
In this review paper we collect several results about copula-based models, especially concerning reg...
An important issue in multivariate statistical modeling is the choice of the appropriate dependence ...
Copula modelling is becoming more popular in modelling dependence multivariate distributions and var...
Copula modelling is becoming more popular in modelling dependence multivariate distributions and var...
Understanding and quantifying dependence is at the core of all modelling efforts in the areas of ins...
The assumption of multivariate normality underlying the Hotelling (Formula presented.) chart is ofte...
In this chapter, we review the problem of modeling correlated count data. Among the several methods ...
The assumption of multivariate normality underlying the Hotelling (Formula presented.) chart is ofte...
In this project we introduce the use of copulas for dealing with residual dependencies in item respo...
Copulas are mathematical objects that fully capture the dependence structure among random variables ...
In many cases of modeling bivariate count data, the interest lies on studying the association rather...
Multivariate count data occur in several different disciplines. However, existing models do not offe...
In this research we introduce a new class of multivariate probability models to the marketing litera...
Modeling bivariate (or multivariate) count data has received increased interest in recent years. The...
In this review paper we collect several results about copula-based models, especially concerning reg...
In this review paper we collect several results about copula-based models, especially concerning reg...
An important issue in multivariate statistical modeling is the choice of the appropriate dependence ...
Copula modelling is becoming more popular in modelling dependence multivariate distributions and var...
Copula modelling is becoming more popular in modelling dependence multivariate distributions and var...
Understanding and quantifying dependence is at the core of all modelling efforts in the areas of ins...
The assumption of multivariate normality underlying the Hotelling (Formula presented.) chart is ofte...
In this chapter, we review the problem of modeling correlated count data. Among the several methods ...
The assumption of multivariate normality underlying the Hotelling (Formula presented.) chart is ofte...
In this project we introduce the use of copulas for dealing with residual dependencies in item respo...
Copulas are mathematical objects that fully capture the dependence structure among random variables ...