The PC algorithm is the most known constraint-based algorithm for learning a directed acyclic graph using conditional independence tests. For Gaussian distributions the tests are based on Pearson correlation coefficients. PC algorithm for data drawn from a Gaussian copula model, Rank PC, has been recently introduced and is based on the Spearman correlation. Here, we present a modified version of the Grow- Shrink algorithm, named Copula Grow-Shrink; it is based on the recovery of the Markov blanket and on the Spearman correlation. By simulations it is shown that the Copula Grow-Shrink algorithm performs better than the PC and the Rank PC algorithms, according to the structural Hamming distance. Finally, the new algorithm is applied ...
We propose a flexible copula model to describe changes with a covariate in the dependence structure ...
Copulas are widely used in high-dimensional multivariate applications where the assumption of Gaussi...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
The PC algorithm is the most known constraint-based algorithm for selecting a directed acyclic graph...
The PC algorithm is the most popular algorithm used to infer the structure of a Bayesian network di...
Learning the joint dependence of discrete variables is a fundamental problem in machine learning, wi...
Abstract. Pair-copula Bayesian networks (PCBNs) are a novel class of multivariate statistical models...
In this paper we extend the standard approach of correlation structure analysis in order to reduce t...
A copula is a function that joins multivariate distribution functions to their margins (i.e. margina...
We propose a semiparametric approach called the nonparanormal SKEPTIC for efficiently and robustly e...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
One of the main algorithms for causal structure learning in Bayesian network is the PC algorithm. T...
For multivariate Gaussian copula models with unknown margins and structured correlation matrices, a ...
In my thesis I~ deal with the design, implementation and testing of the advanced parallel Estimation...
One of the main algorithms for causal structure learning in Bayesian network is the PC algorithm. Th...
We propose a flexible copula model to describe changes with a covariate in the dependence structure ...
Copulas are widely used in high-dimensional multivariate applications where the assumption of Gaussi...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
The PC algorithm is the most known constraint-based algorithm for selecting a directed acyclic graph...
The PC algorithm is the most popular algorithm used to infer the structure of a Bayesian network di...
Learning the joint dependence of discrete variables is a fundamental problem in machine learning, wi...
Abstract. Pair-copula Bayesian networks (PCBNs) are a novel class of multivariate statistical models...
In this paper we extend the standard approach of correlation structure analysis in order to reduce t...
A copula is a function that joins multivariate distribution functions to their margins (i.e. margina...
We propose a semiparametric approach called the nonparanormal SKEPTIC for efficiently and robustly e...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
One of the main algorithms for causal structure learning in Bayesian network is the PC algorithm. T...
For multivariate Gaussian copula models with unknown margins and structured correlation matrices, a ...
In my thesis I~ deal with the design, implementation and testing of the advanced parallel Estimation...
One of the main algorithms for causal structure learning in Bayesian network is the PC algorithm. Th...
We propose a flexible copula model to describe changes with a covariate in the dependence structure ...
Copulas are widely used in high-dimensional multivariate applications where the assumption of Gaussi...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...