AbstractWe extend and improve two existing methods of generating random correlation matrices, the onion method of Ghosh and Henderson [S. Ghosh, S.G. Henderson, Behavior of the norta method for correlated random vector generation as the dimension increases, ACM Transactions on Modeling and Computer Simulation (TOMACS) 13 (3) (2003) 276–294] and the recently proposed method of Joe [H. Joe, Generating random correlation matrices based on partial correlations, Journal of Multivariate Analysis 97 (2006) 2177–2189] based on partial correlations. The latter is based on the so-called D-vine. We extend the methodology to any regular vine and study the relationship between the multiple correlation and partial correlations on a regular vine. We expla...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
In simulation we often have to generate correlated random variables by giving a reference intercorre...
An algorithm for generating correlated random variables with known marginal distributions and a spec...
Simulating sample correlation matrices is important in many areas of statistics. Approaches such as ...
Correlation coefficients among multiple variables are commonly described in the form of matrices. Ap...
Correlation coefficients among multiple variables are commonly described in the form of matrices. Ap...
Behaviour of the NORTA Method for correlated random vector generation as the dimension increase
The NORTA method for multivariate generation is a fast general purpose method for generating samples...
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...
Growing technology, escalating capability, and increasing complexity in many real world systems dema...
AbstractA d-dimensional positive definite correlation matrix R=(ρij) can be parametrized in terms of...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
In simulation we often have to generate correlated random variables by giving a reference intercorre...
An algorithm for generating correlated random variables with known marginal distributions and a spec...
Simulating sample correlation matrices is important in many areas of statistics. Approaches such as ...
Correlation coefficients among multiple variables are commonly described in the form of matrices. Ap...
Correlation coefficients among multiple variables are commonly described in the form of matrices. Ap...
Behaviour of the NORTA Method for correlated random vector generation as the dimension increase
The NORTA method for multivariate generation is a fast general purpose method for generating samples...
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...
Growing technology, escalating capability, and increasing complexity in many real world systems dema...
AbstractA d-dimensional positive definite correlation matrix R=(ρij) can be parametrized in terms of...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
In simulation we often have to generate correlated random variables by giving a reference intercorre...
An algorithm for generating correlated random variables with known marginal distributions and a spec...