Back to Search Start Over

The generalized hyperbolic family and automatic model selection through the multiple-choice LASSO

Authors :
Bagnato, Luca
Farcomeni, Alessio
Punzo, Antonio
Publication Year :
2023

Abstract

We revisit the generalized hyperbolic (GH) distribution and its nested models. These include widely used parametric choices like the multivariate normal, skew-t, Laplace, and several others. We also introduce the multiple-choice LASSO, a novel penalized method for choosing among alternative constraints on the same parameter. A hierarchical multiple-choice LASSO penalized likelihood is optimized to perform simultaneous model selection and inference within the GH family. We illustrate our approach through a simulation study. The methodology proposed in this paper has been implemented in R functions which are available as supplementary material.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2306.08692
Document Type :
Working Paper