Sequential Gibbs Posteriors with Applications to Principal Component Analysis
Authors
Research Topics
Paper Information
-
Journal:
Biometrika -
DOI:
10.1093/biomet/asag020 -
Published:
March 24, 2026 -
Added to Tracker:
Mar 25, 2026
Abstract
Abstract Gibbs posteriors are proportional to a prior distribution multiplied by an exponentiated loss function, with a key tuning parameter that weights the information in the loss relative to the prior and provides control of posterior uncertainty. Gibbs posteriors provide a principled framework for likelihood-free Bayesian inference; however, in many situations, the inclusion of a single tuning parameter inevitably leads to poor uncertainty quantification. In particular, regardless of the value of the parameter, credible regions are far from attaining nominal frequentist coverage, even in large samples. We propose a sequential extension to Gibbs posteriors to address this problem. We prove that the proposed sequential posterior exhibits concentration and satisfies a Bernstein–von Mises theorem, which holds under easily verifiable conditions in Euclidean space and on manifolds. As a by-product, we obtain the first Bernstein–von Mises theorem for traditional likelihood-based Bayesian posteriors on manifolds. All methods are illustrated with an application to principal component analysis.
Author Details
David B Dunson
AuthorSteven Winter
AuthorOmar Melikechi
AuthorResearch Topics & Keywords
Bayesian Statistics
Research AreaCitation Information
APA Format
David B Dunson
,
Steven Winter
&
Omar Melikechi
(2026)
.
Sequential Gibbs Posteriors with Applications to Principal Component Analysis.
Biometrika
, 10.1093/biomet/asag020.
BibTeX Format
@article{paper1091,
title = { Sequential Gibbs Posteriors with Applications to Principal Component Analysis },
author = {
David B Dunson
and Steven Winter
and Omar Melikechi
},
journal = { Biometrika },
year = { 2026 },
doi = { 10.1093/biomet/asag020 },
url = { https://doi.org/10.1093/biomet/asag020 }
}