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Semiparametric inference using fractional posteriors

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Title: Semiparametric inference using fractional posteriors
Authors: L'Huillier, A
Travis, L
Castillo, I
Ray, K
Item Type: Journal Article
Abstract: We establish a general Bernstein–von Mises theorem for approximately linear semiparametric functionals of fractional posterior distributions based on nonparametric priors. This is illustrated in a number of nonparametric settings and for different classes of prior distributions, including Gaussian process priors. We show that fractional posterior credible sets can provide reliable semiparametric uncertainty quantification, but have inflated size. To remedy this, we further propose a shifted-and-rescaled fractional posterior set that is an efficient confidence set having optimal size under regularity conditions. As part of our proofs, we also refine existing contraction rate results for fractional posteriors by sharpening the dependence of the rate on the fractional exponent.
Issue Date: Jan-2023
Date of Acceptance: 31-Dec-2023
URI: http://hdl.handle.net/10044/1/109035
DOI: 10.5555/3648699.3649088
ISSN: 1532-4435
Publisher: Microtome Publishing
Start Page: 18619
End Page: 18679
Journal / Book Title: Journal of Machine Learning Research
Volume: 24
Issue: 1
Copyright Statement: © 2023 Alice L’Huillier, Luke Travis, Isma¨el Castillo and Kolyan Ray. License: CC-BY 4.0, see https://creativecommons.org/licenses/by/4.0/. Attribution requirements are provided at http://jmlr.org/papers/v24/23-0089.html.
Publication Status: Published
Article Number: 389
Online Publication Date: 2024-03-06
Appears in Collections:Statistics
Faculty of Natural Sciences
Mathematics



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