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Auteurs principaux: Rognon-Vael, Paul, Rossell, David
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2508.08336
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author Rognon-Vael, Paul
Rossell, David
author_facet Rognon-Vael, Paul
Rossell, David
contents We discuss the use of empirical Bayes for data integration, in the sense of transfer learning. Our main interest is in settings where one wishes to learn structure (e.g. feature selection) and one only has access to incomplete data from previous studies, such as summaries, estimates or lists of relevant features. We discuss differences between full Bayes and empirical Bayes, and develop a computational framework for the latter. We discuss how empirical Bayes attains consistent variable selection under weaker conditions (sparsity and betamin assumptions) than full Bayes and other standard criteria do, and how it attains faster convergence rates. Our high-dimensional regression examples show that fully Bayesian inference enjoys excellent properties, and that data integration with empirical Bayes can offer moderate yet meaningful improvements in practice.
format Preprint
id arxiv_https___arxiv_org_abs_2508_08336
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Empirical Bayes for Data Integration
Rognon-Vael, Paul
Rossell, David
Methodology
We discuss the use of empirical Bayes for data integration, in the sense of transfer learning. Our main interest is in settings where one wishes to learn structure (e.g. feature selection) and one only has access to incomplete data from previous studies, such as summaries, estimates or lists of relevant features. We discuss differences between full Bayes and empirical Bayes, and develop a computational framework for the latter. We discuss how empirical Bayes attains consistent variable selection under weaker conditions (sparsity and betamin assumptions) than full Bayes and other standard criteria do, and how it attains faster convergence rates. Our high-dimensional regression examples show that fully Bayesian inference enjoys excellent properties, and that data integration with empirical Bayes can offer moderate yet meaningful improvements in practice.
title Empirical Bayes for Data Integration
topic Methodology
url https://arxiv.org/abs/2508.08336