Debiased Bayesian Inference for High-dimensional Regression Models
Econometrics
2025-12-11 v1 Statistics Theory
Computation
Methodology
Machine Learning
Statistics Theory
Abstract
There has been significant progress in Bayesian inference based on sparsity-inducing (e.g., spike-and-slab and horseshoe-type) priors for high-dimensional regression models. The resulting posteriors, however, in general do not possess desirable frequentist properties, and the credible sets thus cannot serve as valid confidence sets even asymptotically. We introduce a novel debiasing approach that corrects the bias for the entire Bayesian posterior distribution. We establish a new Bernstein-von Mises theorem that guarantees the frequentist validity of the debiased posterior. We demonstrate the practical performance of our proposal through Monte Carlo simulations and two empirical applications in economics.
Cite
@article{arxiv.2512.09257,
title = {Debiased Bayesian Inference for High-dimensional Regression Models},
author = {Qihui Chen and Zheng Fang and Ruixuan Liu},
journal= {arXiv preprint arXiv:2512.09257},
year = {2025}
}
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53 pages