• Media type: E-Article
  • Title: A JACKKNIFE VARIANCE ESTIMATOR FOR SELF-WEIGHTED TWO-STAGE SAMPLES
  • Contributor: Escobar, Emilio L.; Berger, Yves G.
  • Published: Institute of Statistical Science, Academia Sinica and International Chinese Statistical Association, 2013
  • Published in: Statistica Sinica, 23 (2013) 2, Seite 595-613
  • Language: English
  • ISSN: 1996-8507; 1017-0405
  • Keywords: General
  • Origination:
  • Footnote:
  • Description: <p>Self-weighted two-stage sampling designs are popular in practice as they simplify field-work. It is common in practice to compute variance estimates only from the first sampling stage, neglecting the second stage. This omission may induce a bias in variance estimation; especially in situations where there is low variability between clusters or when sampling fractions are non-negligible. We propose a design-consistent jackknife variance estimator that takes account of all stages via deletion of clusters and observations within clusters. The proposed jackknife can be used for a wide class of point estimators. It does not need joint-inclusion probabilities and naturally includes finite population corrections. A simulation study shows that the proposed estimator can be more accurate than standard jackknifes (Rao, Wu, and Yue (1992)) for self-weighted two-stage sampling designs.</p>
  • Access State: Open Access