Boosting Distributional Copula Regression
Nicolai Hans, Nadja Klein, Florian Faschingbauer, Michael Schneider, and Andreas Mayr

TL;DR
This paper introduces a novel model-based boosting approach for distributional copula regression, enabling flexible joint modeling of multiple outcomes with covariates, especially useful in high-dimensional biomedical data.
Contribution
It develops a boosting algorithm for distributional copula regression, offering variable selection, shrinkage, and high-dimensional modeling capabilities beyond existing methods.
Findings
Effective in low- and high-dimensional settings
Handles dependence between multiple outcomes
Successfully applied to neonatal clinical data
Abstract
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, i.e. 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 models via a model-based boosting algorithm. Model-based boosting is a modern estimation technique that incorporates useful features like an intrinsic variable selection mechanism, parameter shrinkage and the capability to fit regression models in high…
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