In this thesis, we develop tools to study the influence of predictors on multivariate distributions. We tackle the issue of conditional dependence modeling using generalized additive models, a natural extension of linear and generalized linear models allowing for smooth functions of the covariates. Compared to existing methods, the framework that we develop has two main advantages. First, it is completely flexible, in the sense that the dependence structure can vary with an arbitrary set of covariates in a parametric, nonparametric or semiparametric way. Second, it is both quick and numerically stable, which means that it is suitable for exploratory data analysis and stepwise model building. Starting from the bivariate case, we extend our f...
The development of tools to measure and to model dependence in high-dimensional data is of great int...
summary:The Multivariate Extreme Value distributions have shown their usefulness in environmental st...
Conditional copulas are flexible statistical tools that couple joint conditional and marginal condit...
This paper constructs a new generalized multivariate version of the Gumbel copula that, to our know...
In generalized additive models for location, scale and shape (GAMLSS), the response distribution is ...
While there exists a vast repertoire of probability distributions and estimation methods in the lit...
In many empirical situations, modelling simultaneously three or more outcomes as well as their depen...
Flexible multivariate distributions are needed in many areas. The popular multivariate Gaussian dist...
Correlated binary data are prevalent in a wide range of scientific disciplines, including healthcare...
High-dimensional dependent binary data are prevalent in a wide range of scientific disciplines. A po...
l'Auteur Gildas Mazo est actuellement à l'INRA Centre de Jouy-en-Josas - Unité MaIAGEInternational a...
A construção de distribuições multivariadas com dependências assimétricas, especialmente com dependê...
Dependent longitudinal binary data are prevalent in a wide range of scientific disciplines, includin...
The introduction of copulas, which allow separating the dependence structure of a multivariate distr...
Concepts of association or dependence play a central role when considering multiple random sources i...
The development of tools to measure and to model dependence in high-dimensional data is of great int...
summary:The Multivariate Extreme Value distributions have shown their usefulness in environmental st...
Conditional copulas are flexible statistical tools that couple joint conditional and marginal condit...
This paper constructs a new generalized multivariate version of the Gumbel copula that, to our know...
In generalized additive models for location, scale and shape (GAMLSS), the response distribution is ...
While there exists a vast repertoire of probability distributions and estimation methods in the lit...
In many empirical situations, modelling simultaneously three or more outcomes as well as their depen...
Flexible multivariate distributions are needed in many areas. The popular multivariate Gaussian dist...
Correlated binary data are prevalent in a wide range of scientific disciplines, including healthcare...
High-dimensional dependent binary data are prevalent in a wide range of scientific disciplines. A po...
l'Auteur Gildas Mazo est actuellement à l'INRA Centre de Jouy-en-Josas - Unité MaIAGEInternational a...
A construção de distribuições multivariadas com dependências assimétricas, especialmente com dependê...
Dependent longitudinal binary data are prevalent in a wide range of scientific disciplines, includin...
The introduction of copulas, which allow separating the dependence structure of a multivariate distr...
Concepts of association or dependence play a central role when considering multiple random sources i...
The development of tools to measure and to model dependence in high-dimensional data is of great int...
summary:The Multivariate Extreme Value distributions have shown their usefulness in environmental st...
Conditional copulas are flexible statistical tools that couple joint conditional and marginal condit...