Journal of Data Science logo


Login Register

  1. Home
  2. Issues
  3. Volume 16, Issue 3 (2018)
  4. Iterated Sufficient M-Out-Of-N (M/N) Boo ...

Journal of Data Science

Submit your article Information
  • Article info
  • Related articles
  • More
    Article info Related articles

Iterated Sufficient M-Out-Of-N (M/N) Bootstrap for Non-Regular Smooth Function Models
Volume 16, Issue 3 (2018), pp. 593–604
Beyaztas Ufuk   Alin Aylin   Bandyopadhyay Soutir  

Authors

 
Placeholder
https://doi.org/10.6339/JDS.201807_16(3).0008
Pub. online: 4 August 2022      Type: Research Article      Open accessOpen Access

Published
4 August 2022

Abstract

It is well known that under certain regularity conditions the boot- strap sampling distributions of common statistics are consistent with their true sampling distributions. However, the consistency results rely heavily on the underlying regularity conditions and in fact, a failure to satisfy some of these may lead us to a serious departure from consistency. Consequently, the ‘sufficient bootstrap’ method (which only uses distinct units in a bootstrap sample in order to reduce the computational burden for larger sample sizes) based sampling distributions will also be inconsistent. In this paper, we combine the ideas of sufficient and m-out-of-n (m/n) bootstrap methods to regain consistency. We further propose the iterated version of this bootstrap method in non-regular cases and our simulation study reveals that similar or even better coverage accuracies than percentile bootstrap confidence inter- vals can be obtained through the proposed iterated sufficient m/n bootstrap with less computational time each case.

Related articles PDF XML
Related articles PDF XML

Copyright
No copyright data available.

Keywords
Asymptotic expansion Bootstrap Confidence interval

Metrics
since February 2021
674

Article info
views

695

PDF
downloads

Export citation

Copy and paste formatted citation
Placeholder

Download citation in file


Share


RSS

Journal of data science

  • Online ISSN: 1683-8602
  • Print ISSN: 1680-743X

About

  • About journal

For contributors

  • Submit
  • OA Policy
  • Become a Peer-reviewer

Contact us

  • JDS@ruc.edu.cn
  • No. 59 Zhongguancun Street, Haidian District Beijing, 100872, P.R. China
Powered by PubliMill  •  Privacy policy