In recent years analyses of dependence structures using copulas have become more popular
than the standard correlation analysis. Starting from Aas, Czado, Frigessi, and Bakken
(2009) regular vine pair-copula constructions (PCCs) are considered the most flexible
class of multivariate copulas. PCCs are involved objects but (conditional) independence
present in data can simplify and reduce them significantly. In this paper the authors detect
(conditional) independence in a particular vine PCC model based on bivariate t-copulas
by deriving and implementing a reversible jump Markov chain Monte Carlo algorithm.
However the methodology is general and can be extended to any regular vine PCC and
to all known bivariate copula families. The proposed approach considers model selection
and estimation problems for PCCs simultaneously. The effectiveness of the developed algorithm
is shown in simulations and its usefulness is illustrated in two real data applications.
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In recent years analyses of dependence structures using copulas have become more popular
than the standard correlation analysis. Starting from Aas, Czado, Frigessi, and Bakken
(2009) regular vine pair-copula constructions (PCCs) are considered the most flexible
class of multivariate copulas. PCCs are involved objects but (conditional) independence
present in data can simplify and reduce them significantly. In this paper the authors detect
(conditional) independence in a particular vine PCC...
»