<p>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 (DAGs). 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 that 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 es...
In recent years, conditional copulas, that allow dependence between variables to vary according to t...
The copula Gaussian graphical model (CGGM) is one of the major mathematical models for high dimensio...
Typical data that arise from surveys, experiments, and observational studies include continuous and ...
Abstract. Pair-copula Bayesian networks (PCBNs) are a novel class of multivariate statistical models...
Due to technological breakthrough in recent decades and the rapid increase in the availability of mu...
A new methodology for selecting a Bayesian network for continuous data outside the widely used class...
Many financial modeling applications require to jointly model multiple uncertain quantities to prese...
Modeling multivariate continuous distributions is a task of central interest in statistics and machi...
Many financial modeling applications require to jointly model multiple uncertain quantities to prese...
Many financial modeling applications require to jointly model multiple uncertain quantities to prese...
The PC algorithm is the most popular algorithm used to infer the structure of a Bayesian network di...
La modélisation de distributions continues multivariées est une tâche d'un intérêt central en statis...
Since the global financial crash, one of the main trends in the financial engineering discipline has...
Copula models provide an effective tool for modeling joint distributions. Model selection allowing t...
We propose a new framework to learn non-parametric graphical models from continuous observational da...
In recent years, conditional copulas, that allow dependence between variables to vary according to t...
The copula Gaussian graphical model (CGGM) is one of the major mathematical models for high dimensio...
Typical data that arise from surveys, experiments, and observational studies include continuous and ...
Abstract. Pair-copula Bayesian networks (PCBNs) are a novel class of multivariate statistical models...
Due to technological breakthrough in recent decades and the rapid increase in the availability of mu...
A new methodology for selecting a Bayesian network for continuous data outside the widely used class...
Many financial modeling applications require to jointly model multiple uncertain quantities to prese...
Modeling multivariate continuous distributions is a task of central interest in statistics and machi...
Many financial modeling applications require to jointly model multiple uncertain quantities to prese...
Many financial modeling applications require to jointly model multiple uncertain quantities to prese...
The PC algorithm is the most popular algorithm used to infer the structure of a Bayesian network di...
La modélisation de distributions continues multivariées est une tâche d'un intérêt central en statis...
Since the global financial crash, one of the main trends in the financial engineering discipline has...
Copula models provide an effective tool for modeling joint distributions. Model selection allowing t...
We propose a new framework to learn non-parametric graphical models from continuous observational da...
In recent years, conditional copulas, that allow dependence between variables to vary according to t...
The copula Gaussian graphical model (CGGM) is one of the major mathematical models for high dimensio...
Typical data that arise from surveys, experiments, and observational studies include continuous and ...