Local empirical Bayes correction for Bayesian modeling
Methodology
2025-08-05 v4 Statistics Theory
Statistics Theory
Abstract
The James-Stein estimator has attracted much interest as a shrinkage estimator that yields better estimates than the maximum likelihood estimator. The James-Stein estimator is also very useful as an argument in favor of empirical Bayesian methods. However, for problems involving large-scale data, such as differential gene expression data, the distribution is considered a mixture distribution with different means that cannot be considered sufficiently close. Therefore, it is not appropriate to apply the James-Stein estimator. Efron (2011) proposed a local empirical Bayes correction that attempted to correct a selection bias for large-scale data.
Cite
@article{arxiv.2506.11424,
title = {Local empirical Bayes correction for Bayesian modeling},
author = {Yoshiko Hayashi},
journal= {arXiv preprint arXiv:2506.11424},
year = {2025}
}