Spike and slab empirical Bayes sparse credible sets

08/23/2018
by   Ismaël Castillo, et al.
0

In the sparse normal means model, coverage of adaptive Bayesian posterior credible sets associated to spike and slab prior distributions is considered. The key sparsity hyperparameter is calibrated via marginal maximum likelihood empirical Bayes. First, adaptive posterior contraction rates are derived with respect to d_q--type--distances for q≤ 2. Next, under a type of so-called excessive-bias conditions, credible sets are constructed that have coverage of the true parameter at prescribed 1-α confidence level and at the same time are of optimal diameter. We also prove that the previous conditions cannot be significantly weakened from the minimax perspective.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/05/2018

Empirical Bayes analysis of spike and slab posterior distributions

In the sparse normal means model, convergence of the Bayesian posterior ...
research
03/09/2020

On frequentist coverage of Bayesian credible sets for estimation of the mean under constraints

Frequentist coverage of (1-α)-highest posterior density (HPD) credible s...
research
03/06/2023

Empirical partially Bayes multiple testing and compound χ^2 decisions

We study multiple testing in the normal means problem with estimated var...
research
08/09/2021

Bayesian Analysis of Sparse Multivariate Matched Proportions

Multivariate matched proportions (MMP) data appears in a variety of cont...
research
02/01/2021

Empirical Bayes cumulative ℓ-value multiple testing procedure for sparse sequences

In the sparse sequence model, we consider a popular Bayesian multiple te...
research
10/22/2018

Recovery, detection and confidence sets of communities in a sparse stochastic block model

Posterior distributions for community assignment in the planted bi-secti...
research
10/25/2018

Optimal post-selection inference for sparse signals: a nonparametric empirical-Bayes approach

A large body of recent Bayesian work has focused on the question of how ...

Please sign up or login with your details

Forgot password? Click here to reset