Regression-in-Ratio Estimators for Population Mean by Using Robust Regression in Two Phase Sampling
DOI:
https://doi.org/10.13052/jrss0974-8024.1427Keywords:
Auxiliary information, M-estimator, outliers, robust regression, two phase samplingAbstract
The estimation of population mean is not meaningful using ordinary least square method when data contains some outliers. In the current study, we proposed efficient estimators of population mean using robust regression in two phase sampling. An extensive simulation study is conduct to examine the efficiency of proposed estimators in terms of mean square error (MSE). Real life example and extensive simulation study are cited to demonstrate the performance of the proposed estimators. Theoretical example and simulation studies showed that the suggested estimators are more efficient than the considered estimators in the presence of outliers.
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References
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