Graduation date: 2012A copula is the representation of a multivariate distribution. Copulas are used to model multivariate data in many fields. Recent developments include copula models for spatial data and for discrete marginals. We will present a new methodological approach for modeling discrete spatial processes and for predicting the process at unobserved locations. We employ Bayesian methodology for both estimation and prediction. Comparisons between the new method and Generalized Additive Model (GAM) are done to test the performance of the prediction.\ud \ud Although there exists a large variety of copula functions, only a few are practically manageable and in certain problems one would like to choose the Gaussian copula to model the...
This paper demonstrates how empirical copulas can be used to describe and model spatial dependence s...
Copulas are much used to model nonlinear and non-Gaussian dependence between stochastic variables. T...
Copulas are much used to model nonlinear and non-Gaussian dependence between stochastic variables. T...
AbstractThe Gaussian copula is by far the most popular copula for modeling the association in financ...
A Gaussian copula regression model gives a tractable way of handling a multivariate regression when ...
[THIS IS AN AUGUST 2010 REVISION THAT REPLACES ALL PREVIOUS VERSIONS.] We construct a copula from th...
In this research we introduce a new class of multivariate probability models to the marketing litera...
We construct a copula from the skew t distribution of Sahu, Dey & Branco (2003). This copula can...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
Estimation of copula models with discrete margins is known to be difficult beyond the bivariate case...
We define a copula process which describes the dependencies between arbitrarily many random variable...
This thesis addresses aspects of the statistical inference problem for the semiparametric elliptical...
Estimation of copula models with discrete margins can be difficult beyond the bivariate case. We sho...
We define a copula process which describes the dependencies between arbitrarily many random variable...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
This paper demonstrates how empirical copulas can be used to describe and model spatial dependence s...
Copulas are much used to model nonlinear and non-Gaussian dependence between stochastic variables. T...
Copulas are much used to model nonlinear and non-Gaussian dependence between stochastic variables. T...
AbstractThe Gaussian copula is by far the most popular copula for modeling the association in financ...
A Gaussian copula regression model gives a tractable way of handling a multivariate regression when ...
[THIS IS AN AUGUST 2010 REVISION THAT REPLACES ALL PREVIOUS VERSIONS.] We construct a copula from th...
In this research we introduce a new class of multivariate probability models to the marketing litera...
We construct a copula from the skew t distribution of Sahu, Dey & Branco (2003). This copula can...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
Estimation of copula models with discrete margins is known to be difficult beyond the bivariate case...
We define a copula process which describes the dependencies between arbitrarily many random variable...
This thesis addresses aspects of the statistical inference problem for the semiparametric elliptical...
Estimation of copula models with discrete margins can be difficult beyond the bivariate case. We sho...
We define a copula process which describes the dependencies between arbitrarily many random variable...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
This paper demonstrates how empirical copulas can be used to describe and model spatial dependence s...
Copulas are much used to model nonlinear and non-Gaussian dependence between stochastic variables. T...
Copulas are much used to model nonlinear and non-Gaussian dependence between stochastic variables. T...