Predictive Estimation of Finite Population Mean in Case of Missing Data Under Two-phase Sampling

The present paper deals with the problem of estimation of finite population mean of study variable using two auxiliary variables in two-phase sampling scheme using predictive approach in case of missing values of the study variable and unknown population mean of first auxiliary variable. Four classe...

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Veröffentlicht in:Journal of Statistical Theory and Applications 2023-12, Vol.22 (4), p.283-308
Hauptverfasser: Grover, Lovleen Kumar, Sharma, Anchal
Format: Artikel
Sprache:eng
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Zusammenfassung:The present paper deals with the problem of estimation of finite population mean of study variable using two auxiliary variables in two-phase sampling scheme using predictive approach in case of missing values of the study variable and unknown population mean of first auxiliary variable. Four classes of such estimators have been proposed using this predictive approach. The expressions of bias and mean square errors are derived up to first order of approximation. The optimal values of the constants involved in the proposed classes of estimators have been obtained and thus minimum mean square errors of the proposed classes are obtained in this study. The empirical and graphical comparisons with regression type estimators (under single phase and double phase sampling scheme) and also among themselves have been made for evaluating the performance of the proposed classes for different choices of non-responding units. Five real data sets and three simulated data sets following normal distribution have been used to evaluate the performance of the proposed classes. Numerical findings confirm the theoretical results obtained regarding superiority of proposed classes of estimators over the conventional regression type estimators in terms of percent relative efficiencies.
ISSN:2214-1766
1538-7887
2214-1766
DOI:10.1007/s44199-023-00064-6