Developing calibration estimators for population mean using robust measures of dispersion under stratified random sampling Cover Image

Developing calibration estimators for population mean using robust measures of dispersion under stratified random sampling
Developing calibration estimators for population mean using robust measures of dispersion under stratified random sampling

Author(s): Ahmed Audu, Rajesh Singh, Supriya Khare
Subject(s): Methodology and research technology
Published by: Główny Urząd Statystyczny
Keywords: calibration; outliers; percentage relative efficiency (PRE); stratified sampling;

Summary/Abstract: In this paper, two modified, design-based calibration ratio-type estimators are presented. The suggested estimators were developed under stratified random sampling using information on an auxiliary variable in the form of robust statistical measures, including Gini’s mean difference, Downton’s method and probability weighted moments. The properties (biases and MSEs) of the proposed estimators are studied up to the terms of firstorder approximation by means of Taylor’s Series approximation. The theoretical results were supported by a simulation study conducted on four bivariate populations and generated using normal, chi-square, exponential and gamma populations. The results of the study indicate that the proposed calibration scheme is more precise than any of the others considered in this paper.

  • Issue Year: 22/2021
  • Issue No: 2
  • Page Range: 125-142
  • Page Count: 18
  • Language: English