Capturing complex dependence structures between outcome variables (e.g., study endpoints) is of high relevance in contemporary biomedical data problems and medical research. Distributional copula regression provides a flexible tool to model the joint distribution of multiple outcome variables by disentangling the marginal response distributions and their dependence structure. In a regression setup, each parameter of the copula model, that is, the marginal distribution parameters and the copula dependence parameters, can be related to covariates via structured additive predictors. We propose a framework to fit distributional copula regression via model‐based boosting, which is a modern estimation technique that incorporates useful features l...
When two interventions are randomized to multiple sub-clusters within a whole cluster, accounting fo...
The introduction of copulas, which allow separating the dependence structure of a multivariate distr...
Conditional copulas are flexible statistical tools that couple joint conditional and marginal condit...
University of Minnesota Ph.D. dissertation. August 2015. Major: Biostatistics. Advisors: James Hodge...
Bivariate copula regression allows for the flexible combination of two arbitrary, continuous margina...
In this research we introduce a new class of multivariate probability models to the marketing litera...
The primary aim of this thesis is the elucidation of covariate effects on the dependence structure o...
In generalized additive models for location, scale and shape (GAMLSS), the response distribution is ...
We develop a flexible two-equation copula model to address endogeneity of medical expenditures in a ...
Background: An important issue in prediction modeling of multivariate data is the measure of depende...
Bivariate meta‐analysis provides a useful framework for combining information across related studies...
The main goal of this thesis is to develop Bayesian model for studying the influence of covariate on...
Learning the joint dependence of discrete variables is a fundamental problem in machine learning, wi...
This article describes the R package gcmr for fitting Gaussian copula marginal regression models. Th...
Understanding and quantifying dependence is at the core of all modelling efforts in the areas of ins...
When two interventions are randomized to multiple sub-clusters within a whole cluster, accounting fo...
The introduction of copulas, which allow separating the dependence structure of a multivariate distr...
Conditional copulas are flexible statistical tools that couple joint conditional and marginal condit...
University of Minnesota Ph.D. dissertation. August 2015. Major: Biostatistics. Advisors: James Hodge...
Bivariate copula regression allows for the flexible combination of two arbitrary, continuous margina...
In this research we introduce a new class of multivariate probability models to the marketing litera...
The primary aim of this thesis is the elucidation of covariate effects on the dependence structure o...
In generalized additive models for location, scale and shape (GAMLSS), the response distribution is ...
We develop a flexible two-equation copula model to address endogeneity of medical expenditures in a ...
Background: An important issue in prediction modeling of multivariate data is the measure of depende...
Bivariate meta‐analysis provides a useful framework for combining information across related studies...
The main goal of this thesis is to develop Bayesian model for studying the influence of covariate on...
Learning the joint dependence of discrete variables is a fundamental problem in machine learning, wi...
This article describes the R package gcmr for fitting Gaussian copula marginal regression models. Th...
Understanding and quantifying dependence is at the core of all modelling efforts in the areas of ins...
When two interventions are randomized to multiple sub-clusters within a whole cluster, accounting fo...
The introduction of copulas, which allow separating the dependence structure of a multivariate distr...
Conditional copulas are flexible statistical tools that couple joint conditional and marginal condit...