arXiv (Cornell University)
Enhanced variable selection for boosting sparser and less complex models in distributional copula regression
June 2024 • Annika Strömer, Nadja Klein, Christian Staerk, Florian Faschingbauer, Hannah Klinkhammer, Andreas Mayr
Structured additive distributional copula regression allows to model the joint distribution of multivariate outcomes by relating all distribution parameters to covariates. Estimation via statistical boosting enables accounting for high-dimensional data and incorporating data-driven variable selection, both of which are useful given the complexity of the model class. However, as known from univariate (distributional) regression, the standard boosting algorithm tends to select too many variables with minor importanc…