@article{4297de2f80d64e398943bd13c60046ed,
title = "Uncertainty quantification for the horseshoe (with discussion)",
abstract = "We investigate the credible sets and marginal credible intervals resulting from the horseshoe prior in the sparse multivariate normal means model. We do so in an adaptive setting without assuming knowledge of the sparsity level (number of signals). We consider both the hierarchical Bayes method of putting a prior on the unknown sparsity level and the empirical Bayes method with the sparsity level estimated by maximum marginal likelihood. We show that credible balls and marginal credible intervals have good frequentist coverage and optimal size if the sparsity level of the prior is set correctly. By general theory honest confidence sets cannot adapt in size to an unknown sparsity level. Accordingly the hierarchical and empirical Bayes credible sets based on the horseshoe prior are not honest over the full parameter space. We show that this is due to over-shrinkage for certain parameters and characterise the set of parameters for which credible balls and marginal credible intervals do give correct uncertainty quantification. In particular we show that the fraction of false discoveries by the marginal Bayesian procedure is controlled by a correct choice of cut-off.",
keywords = "Credible sets, Frequentist bayes, Horseshoe, Nearly black vectors, Normal means problem, Sparsity",
author = "{van der Pas}, St{\'e}phanie and Botond Szab{\'o} and {van der Vaart}, Aad",
note = "Funding Information: ∗Leiden University, svdpas@math.leidenuniv.nl †Leiden University ‡Budapest University of Technology and Economics, b.t.szabo@math.leidenuniv.nl §Leiden University, avdvaart@math.leidenuniv.nl ¶Research supported by the Netherlands Organization for Scientific Research. ‖The research leading to these results has received funding from the European Research Council under ERC Grant Agreement 320637. Funding Information: This work is partially supported by NSF grant DMS–1507073. Funding Information: ∗Leiden University, svdpas@math.leidenuniv.nl †Leiden University and Budapest University of Technology and Economics, b.t.szabo@math.leidenuniv.nl ‡Leiden University, avdvaart@math.leidenuniv.nl §Research supported by the Netherlands Organization for Scientific Research. ¶The research leading to these results has received funding from the European under ERC Grant Agreement 320637. Publisher Copyright: {\textcopyright} 2017 International Society for Bayesian Analysis. Copyright: Copyright 2017 Elsevier B.V., All rights reserved.",
year = "2017",
doi = "10.1214/17-BA1065",
language = "English",
volume = "12",
pages = "1221--1274",
journal = "Bayesian Analysis",
issn = "1936-0975",
publisher = "Carnegie Mellon University",
number = "4",
}