Pair-copula Bayesian networks (PCBNs) are a novel class of multivariate
statistical models, which combine the distributional flexibility of pair-copula
constructions (PCCs) with the parsimony of conditional independence models
associated with directed acyclic graphs (DAG). We are first to provide generic
algorithms for random sampling and likelihood inference in arbitrary PCBNs as well
as for selecting orderings of the parents of the vertices in the underlying graphs.
Model selection of the DAG is facilitated using a version of the well-known PC
algorithm which is based on a novel test for conditional independence of random
variables tailored to the PCC framework. A simulation study shows the PC algorithm's
high aptitude for structure estimation in non-Gaussian PCBNs. The proposed methods
are finally applied to modelling financial return data.
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Pair-copula Bayesian networks (PCBNs) are a novel class of multivariate
statistical models, which combine the distributional flexibility of pair-copula
constructions (PCCs) with the parsimony of conditional independence models
associated with directed acyclic graphs (DAG). We are first to provide generic
algorithms for random sampling and likelihood inference in arbitrary PCBNs as well
as for selecting orderings of the parents of the vertices in the underlying graphs.
Model selection of th...
»