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Article
On Regression Estimators for Different Stratified Sampling Schemes
Journal of Statistics and Management Systems
  • Arpita Chatterjee, Georgia Southern University
  • Hani M. Samawi, Georgia Southern University
  • Lili Yu, Georgia Southern University
  • Daniel F. Linder, Georgia Southern University
  • Jingxian Cai, Georgia Southern University
  • Robert L. Vogel, Georgia Southern University
Document Type
Article
Publication Date
1-1-2017
DOI
10.1080/09720510.2017.1411027
Abstract

Two types of stratified regression estimators for the population mean, the separate and the combined estimators, are investigated using stratified random sampling scheme (SSRS) and stratified ranked set sampling (SRSS). We derived mean and variance of the proposed estimators. In addition, we compared the performance of the regression estimators using SRSS with respect to SSRS by simulation. Our derivations and simulations revealed that our proposed estimators are unbiased and using SRSS is more efficient than using SSRS. The procedure are illustrated by using the bilirubin levels in babies in a neonatal intensive care unit data.

Citation Information
Arpita Chatterjee, Hani M. Samawi, Lili Yu, Daniel F. Linder, et al.. "On Regression Estimators for Different Stratified Sampling Schemes" Journal of Statistics and Management Systems Vol. 20 Iss. 6 (2017) p. 1147 - 1165 ISSN: 2169-0014
Available at: http://works.bepress.com/robert_vogel/309/