Asymptotically minimax empirical Bayes estimation of a sparse normal mean vector

Type: Article

Publication Date: 2014-01-01

Citations: 50

DOI: https://doi.org/10.1214/14-ejs949

Abstract

For the important classical problem of inference on a sparse high-dimensional normal mean vector, we propose a novel empirical Bayes model that admits a posterior distribution with desirable properties under mild conditions. In particular, our empirical Bayes posterior distribution concentrates on balls, centered at the true mean vector, with squared radius proportional to the minimax rate, and its posterior mean is an asymptotically minimax estimator. We also show that, asymptotically, the support of our empirical Bayes posterior has roughly the same effective dimension as the true sparse mean vector. Simulation from our empirical Bayes posterior is straightforward, and our numerical results demonstrate the quality of our method compared to others having similar large-sample properties.

Locations

  • arXiv (Cornell University) - View - PDF
  • DataCite API - View
  • Electronic Journal of Statistics - View - PDF

Similar Works

Action Title Year Authors
+ Empirical Bayes posterior concentration in sparse high-dimensional linear models 2017 Ryan R. Martin
Raymond Mess
Stephen G. Walker
+ PDF Chat General maximum likelihood empirical Bayes estimation of normal means 2009 Wenhua Jiang
Cun‐Hui Zhang
+ Minimax Bayes estimators of a multivariate normal mean 1978 Ray Edwin Faith
+ Empirical Bayes, SURE and Sparse Normal Mean Models 2017 Xianyang Zhang
Anirban Bhattacharya
+ Bayes minimax estimation of the multivariate normal mean vector for the case of common unknown variance 2011 S. Zinodiny
William E. Strawderman
Ahmad Parsian
+ Bayes minimax estimators of a multivariate normal mean 1991 Tze Fen Li
Dinesh S. Bhoj
+ Sparse Confidence Sets for Normal Mean Models 2020 Ning Yang
Guang Cheng
+ Minimax estimation of a bounded normal mean vector 1990 J. Calvin Berry
+ Bayes minimax estimation of the multivariate normal mean vector under quadratic loss functions 2013 S. Zinodiny
Sadegh Rezaei
Omid Naghshineh Arjmand
Saralees Nadarajah
+ Needles and straw in a haystack: robust empirical Bayes confidence for possibly sparse sequences 2015 Eduard Belitser
Nurzhan Nurushev
+ Proper Bayes and minimax predictive densities related to estimation of a normal mean matrix 2017 Hisayuki Tsukuma
Tatsuya Kubokawa
+ PDF Chat Empirical Priors and Coverage of Posterior Credible Sets in a Sparse Normal Mean Model 2019 Ryan Martin
Bo Ning
+ PDF Chat Minimax Estimation of the Mean of a Normal Distribution when the Parameter Space is Restricted 1981 Peter J. Bickel
+ Needles and straw in a haystack: empirical Bayes confidence for possibly sparse sequences 2015 Eduard Belitser
Nurzhan Nurushev
+ Solving the Empirical Bayes Normal Means Problem with Correlated Noise 2018 Lei Sun
Matthew Stephens
+ Solving the Empirical Bayes Normal Means Problem with Correlated Noise 2018 Lei Sun
Matthew Stephens
+ Optimal Shrinkage Estimator for High-Dimensional Mean Vector 2016 Taras Bodnar
Ostap Okhrin
Nestor Parolya
+ Optimal shrinkage estimator for high-dimensional mean vector 2018 Taras Bodnar
Ostap Okhrin
Nestor Parolya
+ PDF Chat Sparse confidence sets for normal mean models 2023 Yang Ning
Guang Cheng
+ Bayes minimax estimation of the multivariate normal mean vector under balanced loss function 2014 S. Zinodiny
Sadegh Rezaei
Saralees Nadarajah