Pair-copula constructions (or vine copulas) are structured, in the layout of vines, with bivariate copulas and conditional bivariate copulas. The main contribution of the current work is an approach to the long-standing problem: how to cope with the dependence structure between the two conditioned variables indicated by an edge, acknowledging that the dependence structure changes with the values of the conditioning variables. This problem is known as the non-simplified vine copula modelling and, though recognized as crucial in the field of multivariate modelling, remains widely unexplored due to its inherent complication, and hence is the motivation of the current work. Rather than resorting to traditional parametric or non-parametric metho...
In recent years, conditional copulas, that allow dependence between variables to vary according to t...
Abstract: This paper features an application of Regular Vine copulas which are a novel and recently...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
Pair-copula constructions (or vine copulas) are structured, in the layout of vines, with bivariate c...
Copulas are widely used in high-dimensional multivariate applications where the assumption of Gaussi...
Copulas are important models that allow to capture the dependence among variables. There are many ty...
Dependence Modeling with Copulas covers the substantial advances that have taken place in the field ...
Flexible multivariate distributions are needed in many areas. The popular multivariate Gaussian dist...
In a series of papers, Bedford and Cooke used vine (or pair-copulae) as a graphical tool for represe...
This textbook provides a step-by-step introduction to the class of vine copulas, their statistical i...
To uncover complex hidden dependency structures among variables, researchers have used a mixture of ...
Copula functions have been widely used in actuarial science, nance andeconometrics. Though multivari...
The identification of an appropriate multivariate copula for capturing the dependence structure in m...
AbstractPair-copula constructions (PCCs) offer great flexibility in modeling multivariate dependence...
International audienceWe present a new recursive algorithm to construct vine copulas based on an und...
In recent years, conditional copulas, that allow dependence between variables to vary according to t...
Abstract: This paper features an application of Regular Vine copulas which are a novel and recently...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
Pair-copula constructions (or vine copulas) are structured, in the layout of vines, with bivariate c...
Copulas are widely used in high-dimensional multivariate applications where the assumption of Gaussi...
Copulas are important models that allow to capture the dependence among variables. There are many ty...
Dependence Modeling with Copulas covers the substantial advances that have taken place in the field ...
Flexible multivariate distributions are needed in many areas. The popular multivariate Gaussian dist...
In a series of papers, Bedford and Cooke used vine (or pair-copulae) as a graphical tool for represe...
This textbook provides a step-by-step introduction to the class of vine copulas, their statistical i...
To uncover complex hidden dependency structures among variables, researchers have used a mixture of ...
Copula functions have been widely used in actuarial science, nance andeconometrics. Though multivari...
The identification of an appropriate multivariate copula for capturing the dependence structure in m...
AbstractPair-copula constructions (PCCs) offer great flexibility in modeling multivariate dependence...
International audienceWe present a new recursive algorithm to construct vine copulas based on an und...
In recent years, conditional copulas, that allow dependence between variables to vary according to t...
Abstract: This paper features an application of Regular Vine copulas which are a novel and recently...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...