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Informative co-data learning for high-dimensional Horseshoe regression

Methodology 2023-03-13 v1 Applications Computation

Abstract

High-dimensional data often arise from clinical genomics research to infer relevant predictors of a particular trait. A way to improve the predictive performance is to include information on the predictors derived from prior knowledge or previous studies. Such information is also referred to as ``co-data''. To this aim, we develop a novel Bayesian model for including co-data in a high-dimensional regression framework, called Informative Horseshoe regression (infHS). The proposed approach regresses the prior variances of the regression parameters on the co-data variables, improving variable selection and prediction. We implement both a Gibbs sampler and a Variational approximation algorithm. The former is suited for applications of moderate dimensions which, besides prediction, target posterior inference, whereas the computational efficiency of the latter allows handling a very large number of variables. We show the benefits from including co-data with a simulation study. Eventually, we demonstrate that infHS outperforms competing approaches for two genomics applications.

Keywords

Cite

@article{arxiv.2303.05898,
  title  = {Informative co-data learning for high-dimensional Horseshoe regression},
  author = {Claudio Busatto and Mark van de Wiel},
  journal= {arXiv preprint arXiv:2303.05898},
  year   = {2023}
}
R2 v1 2026-06-28T09:11:02.888Z