A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize the Markov trees often used in modelling high-dimensional distributions. They differ from Markov trees and Bayesian belief nets in that the concept of conditional independence is weakened to allow for various forms of conditional dependence. Vines can be used to specify multivariate distributions in a straightforward way by specifying various marginal distributions and the ways in which these marginals are to be coupled. Such distributions have applications in uncertainty analysis where the objective is to determine the sensitivity of a model output with respect to the uncertainty in unknown parameters. Expert information is frequently elici...
Multivariate statistical models can be simplified by assuming that a pattern of conditional independ...
Multivariate statistical models can be simplified by assuming that a pattern of conditional independ...
In recent years, conditional copulas, that allow dependence between variables to vary according to t...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
A vine is a new graphical model for dependent random variables. Vines generalize the Markov trees of...
A vine is a new graphical model for dependent random variables. Vines generalize the Markov trees of...
A vine is a new graphical model for dependent random variables. Vines generalize the Markov trees of...
A vine is a new graphical model for dependent random variables. Vines generalize the Markov trees of...
In a series of papers, Bedford and Cooke used vine (or pair-copulae) as a graphical tool for represe...
Multivariate statistical models can be simplified by assuming that a pattern of conditional independ...
Multivariate statistical models can be simplified by assuming that a pattern of conditional independ...
In recent years, conditional copulas, that allow dependence between variables to vary according to t...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
A vine is a new graphical model for dependent random variables. Vines generalize the Markov trees of...
A vine is a new graphical model for dependent random variables. Vines generalize the Markov trees of...
A vine is a new graphical model for dependent random variables. Vines generalize the Markov trees of...
A vine is a new graphical model for dependent random variables. Vines generalize the Markov trees of...
In a series of papers, Bedford and Cooke used vine (or pair-copulae) as a graphical tool for represe...
Multivariate statistical models can be simplified by assuming that a pattern of conditional independ...
Multivariate statistical models can be simplified by assuming that a pattern of conditional independ...
In recent years, conditional copulas, that allow dependence between variables to vary according to t...