This article provides a Bayesian analysis of pair-copula constructions (Aas et al., 2007 Insurance
Math. Econom.) for modeling multivariate dependence structures. These constructions are
based on bivariate t.copulas as building blocks and can model the nature of extremal events in
bivariate margins individually. According to recent empirical studies (Fischer et al. (2007) and
Berg and Aas (2007)) pair-copula constructions (PCCfs) outperform many other multivariate
copula constructions in fitting multivariate financial data. Parameter estimation in multivariate
copulas is generally performed using maximum likelihood. However confidence intervals for
parameters of PCCfs are not easy to obtain and therefore statistical inference in these models
has not been addressed so far. In this article we develop a Markov chain Monte Carlo (MCMC)
algorithm which allows for interval estimation by means of credible intervals. Our MCMC
algorithm can reveal unconditional as well as conditional independence in the data which can
simplify resulting PCCfs. In applications we consider Norwegian financial returns and Euro
swap rates and are able to identify meaningful conditional independencies in both data sets.
For the Norwegian financial returns data our findings support the view of Norway as a healthy
economy, while for the Euro swap rates data they explain the nature of small twists in the yield
curve.
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This article provides a Bayesian analysis of pair-copula constructions (Aas et al., 2007 Insurance
Math. Econom.) for modeling multivariate dependence structures. These constructions are
based on bivariate t.copulas as building blocks and can model the nature of extremal events in
bivariate margins individually. According to recent empirical studies (Fischer et al. (2007) and
Berg and Aas (2007)) pair-copula constructions (PCCfs) outperform many other multivariate
copula constructions in f...
»