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Mean Estimation of a Sensitive Variable under Nonresponse Using Three-Stage RRT Model in Stratified Two-Phase Sampling

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  • Ronald Onyango
  • Brian Oduor
  • Francis Odundo
  • Marek T. Malinowski

Abstract

The present study addresses the problems of mean estimation and nonresponse under the three-stage RRT model. Auxiliary information on an attribute and variable is used to propose a generalized class of exponential ratio-type estimators. Expressions for the bias, mean squared error, and minimum mean squared error for the proposed estimator are derived up to the first degree of approximation. The efficiency of the proposed estimator is studied theoretically and numerically using two real datasets. From the numerical analysis, the proposed generalized class of exponential ratio-type estimators outperforms ordinary mean estimators, usual ratio estimators, and exponential ratio-type estimators. Furthermore, the efficiencies of the mean estimators are observed to decrease with an increase in the sensitivity level of the survey question. As the inverse sampling rate and nonresponse rate go up, so does the efficiency of the mean estimators, which makes them more accurate.

Suggested Citation

  • Ronald Onyango & Brian Oduor & Francis Odundo & Marek T. Malinowski, 2022. "Mean Estimation of a Sensitive Variable under Nonresponse Using Three-Stage RRT Model in Stratified Two-Phase Sampling," Journal of Probability and Statistics, Hindawi, vol. 2022, pages 1-14, April.
  • Handle: RePEc:hin:jnljps:4530120
    DOI: 10.1155/2022/4530120
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