This paper features an application of Regular Vine copulas which are a novel and recently developed statistical and mathematical tool which can be applied in the assessment of composite financial risk. Copula-based dependence modelling is a popular tool in financial applications, but is usually applied to pairs of securities. By contrast, Vine copulas provide greater flexibility and permit the modelling of complex dependency patterns using the rich variety of bivariate copulas which may be arranged and analysed in a tree structure to explore multiple dependencies. The paper features the use of Regular Vine copulas in an analysis of the co-dependencies of 10 major European Stock Markets, as represented by individual market indices and the co...
Regular vine copulas are multivariate dependence models constructed from pair-copulas (bivariate cop...
Abstract: It is often very difficult to accurately measure dependence structure in multivariate dist...
Abstract: It is often very difficult to accurately measure dependence structure in multivariate dist...
This paper features an application of Regular Vine copulas which are a novel and recently developed ...
This paper features an application of Regular Vine copulas which are a novel and recently developed ...
This paper features an application of Regular Vine copulas which are a novel and recently developed ...
This paper features an application of Regular Vine copulas which are a novel and recently developed ...
This paper features an application of Regular Vine copulas which are a novel and recently developed...
Abstract: This paper features an application of Regular Vine copulas which are a novel and recently...
This paper features an application of Regular Vine copulas which are a novel and recently developed ...
markdownabstract__abstract__ This paper features an application of Regular Vine copulas which are...
This thesis contains three essays on dependence modelling with high dimension vine copulas and its a...
In this paper, we demonstrate the superiority of vine copulas over conventional copulas when modelin...
In this paper, we demonstrate the superiority of vine copulas over conventional copulas when modelin...
Abstract: It is often very difficult to accurately measure dependence structure in multivariate dist...
Regular vine copulas are multivariate dependence models constructed from pair-copulas (bivariate cop...
Abstract: It is often very difficult to accurately measure dependence structure in multivariate dist...
Abstract: It is often very difficult to accurately measure dependence structure in multivariate dist...
This paper features an application of Regular Vine copulas which are a novel and recently developed ...
This paper features an application of Regular Vine copulas which are a novel and recently developed ...
This paper features an application of Regular Vine copulas which are a novel and recently developed ...
This paper features an application of Regular Vine copulas which are a novel and recently developed ...
This paper features an application of Regular Vine copulas which are a novel and recently developed...
Abstract: This paper features an application of Regular Vine copulas which are a novel and recently...
This paper features an application of Regular Vine copulas which are a novel and recently developed ...
markdownabstract__abstract__ This paper features an application of Regular Vine copulas which are...
This thesis contains three essays on dependence modelling with high dimension vine copulas and its a...
In this paper, we demonstrate the superiority of vine copulas over conventional copulas when modelin...
In this paper, we demonstrate the superiority of vine copulas over conventional copulas when modelin...
Abstract: It is often very difficult to accurately measure dependence structure in multivariate dist...
Regular vine copulas are multivariate dependence models constructed from pair-copulas (bivariate cop...
Abstract: It is often very difficult to accurately measure dependence structure in multivariate dist...
Abstract: It is often very difficult to accurately measure dependence structure in multivariate dist...