Graphical models are a useful tool with increasing diffusion. In the categorical variable framework, they provide important visual support to understand the relationships among the considered variables. Besides, particular chain graphical models are suitable to represent multivariate regression models. However, the associated parameterization, such as marginal log-linear models, is often difficult to interpret when the number of variables increases because of a large number of parameters involved. On the contrary, conditional and marginal independencies reduce the number of parameters needed to represent the joint probability distribution of the variables. In compliance with the parsimonious principle, it is worthwhile to consider also the ...
GraphicalMap ov models use graphs, either undirected, directed, or mixed, to represent possible depe...
The Probabilistic Graphical Models use graphs in order to represent the joint distribution of q vari...
The graphical models (GM) for categorical data are models useful to represent conditional independen...
Graphical models are a useful tool with increasing diffusion. In the categorical variable framework,...
This work focuses on the study of the relationships among a set of categorical (ordinal) variables u...
In this work we handle with categorical (ordinal) variables and we focus on the (in)dependence relat...
We discuss a class of chain graph models for categorical variables defined by what we call a multiva...
For a set of variables collected in a contingency table, we focus on a particular kind of relationsh...
The Probabilistic Graphical Models use graphs in order to represent the joint distribution of q vari...
Theory of graphical models has matured over more than three decades to provide the backbone for seve...
The Probabilistic Graphical Models use graphs in order to represent the joint distribution of q vari...
The study of marginal and/or conditional relationships among a set of categorical variables is widel...
The theme of this thesis is context-speci c independence in graphical models. Considering a system o...
Chain Graph Models (CGs) are a widely used tool to describe the conditional independence relationshi...
Abstract The ultimate problem considered in this thesis is modeling a high-dimensional joint distrib...
GraphicalMap ov models use graphs, either undirected, directed, or mixed, to represent possible depe...
The Probabilistic Graphical Models use graphs in order to represent the joint distribution of q vari...
The graphical models (GM) for categorical data are models useful to represent conditional independen...
Graphical models are a useful tool with increasing diffusion. In the categorical variable framework,...
This work focuses on the study of the relationships among a set of categorical (ordinal) variables u...
In this work we handle with categorical (ordinal) variables and we focus on the (in)dependence relat...
We discuss a class of chain graph models for categorical variables defined by what we call a multiva...
For a set of variables collected in a contingency table, we focus on a particular kind of relationsh...
The Probabilistic Graphical Models use graphs in order to represent the joint distribution of q vari...
Theory of graphical models has matured over more than three decades to provide the backbone for seve...
The Probabilistic Graphical Models use graphs in order to represent the joint distribution of q vari...
The study of marginal and/or conditional relationships among a set of categorical variables is widel...
The theme of this thesis is context-speci c independence in graphical models. Considering a system o...
Chain Graph Models (CGs) are a widely used tool to describe the conditional independence relationshi...
Abstract The ultimate problem considered in this thesis is modeling a high-dimensional joint distrib...
GraphicalMap ov models use graphs, either undirected, directed, or mixed, to represent possible depe...
The Probabilistic Graphical Models use graphs in order to represent the joint distribution of q vari...
The graphical models (GM) for categorical data are models useful to represent conditional independen...