In many empirical situations, modelling simultaneously three or more outcomes as well as their dependence structure can be of considerable relevance. Copulae provide a powerful framework to build multivariate distributions and allow one to view the specification of the marginal responses’ equations and their dependence as separate but related issues. We propose a generalizationof the trivariate additive probit model where the link functions can in principle be derived from any parametric distribution and the parameters describing the residual association between the responses can be made dependent on several types of covariate effects (such as linear, nonlinear, random, and spatial effects). All the coefficients of the model are estimated s...
Longitudinal studies of a binary outcome are common in the health, social, and behavioral sciences. ...
Let us assume that X, Y and U are observed and that the conditional mean of U given X and Y can be e...
Many seemingly disparate approaches for marginal modeling have been developed in recent years. We de...
This article proposes a penalized likelihood method to estimate a trivariate probit model, which acc...
In generalized additive models for location, scale and shape (GAMLSS), the response distribution is ...
Bivariate survival outcomes arise frequently in applied studies where the occurrence of two events o...
In this thesis, we develop tools to study the influence of predictors on multivariate distributions....
This article proposes an approach to estimate and make inference on the parameters of copula link-ba...
Regression models have been important tools to study the association between outcome variables and ...
Bivariate survival outcomes arise frequently in applied studies where the occurrence of two events o...
Marginalised models, also known as marginally specified models, have recently become a popular tool ...
Non-random sample selection is a commonplace amongst many e mpirical studies and it appears when an ...
Conditional copulas are flexible statistical tools that couple joint conditional and marginal condit...
Dependent longitudinal binary data are prevalent in a wide range of scientific disciplines, includin...
We present a class of multivariate regression models for ordinal response variables in which the coe...
Longitudinal studies of a binary outcome are common in the health, social, and behavioral sciences. ...
Let us assume that X, Y and U are observed and that the conditional mean of U given X and Y can be e...
Many seemingly disparate approaches for marginal modeling have been developed in recent years. We de...
This article proposes a penalized likelihood method to estimate a trivariate probit model, which acc...
In generalized additive models for location, scale and shape (GAMLSS), the response distribution is ...
Bivariate survival outcomes arise frequently in applied studies where the occurrence of two events o...
In this thesis, we develop tools to study the influence of predictors on multivariate distributions....
This article proposes an approach to estimate and make inference on the parameters of copula link-ba...
Regression models have been important tools to study the association between outcome variables and ...
Bivariate survival outcomes arise frequently in applied studies where the occurrence of two events o...
Marginalised models, also known as marginally specified models, have recently become a popular tool ...
Non-random sample selection is a commonplace amongst many e mpirical studies and it appears when an ...
Conditional copulas are flexible statistical tools that couple joint conditional and marginal condit...
Dependent longitudinal binary data are prevalent in a wide range of scientific disciplines, includin...
We present a class of multivariate regression models for ordinal response variables in which the coe...
Longitudinal studies of a binary outcome are common in the health, social, and behavioral sciences. ...
Let us assume that X, Y and U are observed and that the conditional mean of U given X and Y can be e...
Many seemingly disparate approaches for marginal modeling have been developed in recent years. We de...