We propose a new framework to learn non-parametric graphical models from continuous observational data. Our method is based on concepts from information theory in order to discover independences and causality between variables: the conditional and multivariate mutual information (such as \cite{verny2017learning} for discrete models). To estimate these quantities, we propose non-parametric estimators relying on the Bernstein copula and that are constructed by exploiting the relation between the mutual information and the copula entropy \cite{ma2011mutual, belalia2017testing}. To our knowledge, this relation is only documented for the bivariate case and, for the need of our algorithms, is here extended to the conditional and multivariate mutu...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
Typical data that arise from surveys, experiments, and observational studies include continuous and ...
The dependence between random variables may be measured by mutual information. However, the estimati...
A new methodology for selecting a Bayesian network for continuous data outside the widely used class...
Modeling multivariate continuous distributions is a task of central interest in statistics and machi...
La modélisation de distributions continues multivariées est une tâche d'un intérêt central en statis...
Due to technological breakthrough in recent decades and the rapid increase in the availability of mu...
Abstract. Pair-copula Bayesian networks (PCBNs) are a novel class of multivariate statistical models...
We study Bayesian networks for continuous variables using nonlinear conditional density estimators. ...
<p>Pair-copula Bayesian networks (PCBNs) are a novel class of multivariate statistical models, which...
40 pages, 12 figuresUndirected probabilistic graphical models represent the conditional dependencies...
Learning the joint dependence of discrete variables is a fundamental problem in machine learning, wi...
The objective of this thesis is to design an algorithm for learning the structure of non-parametric ...
Mutual information is a measurable quantity of particular interest for several applications that int...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
Typical data that arise from surveys, experiments, and observational studies include continuous and ...
The dependence between random variables may be measured by mutual information. However, the estimati...
A new methodology for selecting a Bayesian network for continuous data outside the widely used class...
Modeling multivariate continuous distributions is a task of central interest in statistics and machi...
La modélisation de distributions continues multivariées est une tâche d'un intérêt central en statis...
Due to technological breakthrough in recent decades and the rapid increase in the availability of mu...
Abstract. Pair-copula Bayesian networks (PCBNs) are a novel class of multivariate statistical models...
We study Bayesian networks for continuous variables using nonlinear conditional density estimators. ...
<p>Pair-copula Bayesian networks (PCBNs) are a novel class of multivariate statistical models, which...
40 pages, 12 figuresUndirected probabilistic graphical models represent the conditional dependencies...
Learning the joint dependence of discrete variables is a fundamental problem in machine learning, wi...
The objective of this thesis is to design an algorithm for learning the structure of non-parametric ...
Mutual information is a measurable quantity of particular interest for several applications that int...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
Typical data that arise from surveys, experiments, and observational studies include continuous and ...
The dependence between random variables may be measured by mutual information. However, the estimati...