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This article presents an improved class of efficient estimators aimed at estimating the finite population variance of the study variable. These estimators are especially useful when we have information about the minimum/maximum values of the auxiliary variable within a framework of simple random sampling. The characteristics of the proposed class of estimators, including bias and mean squared error (MSE) under simple random sampling are derived through a first-order approximation. To assess the performance and validate the theoretical outcomes, we conduct a simulation study. Results indicate that the proposed class of estimators has lower MSEs as compared to other existing estimators across all simulation scenarios. Three datasets are used in the application section to emphasize the effectiveness of the proposed class of estimators over conventional unbiased variance estimators, ratio and regression estimators, and other existing estimators.
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Umer Daraz
Hunan University
Jinbiao Wu
Wuhan Institute of Technology
Olayan Albalawi
International Islamic University, Islamabad
Mathematics
Central South University
University of Tabuk
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Daraz et al. (Mon,) studied this question.
synapsesocial.com/papers/68e665f2b6db6435875f215a — DOI: https://doi.org/10.3390/math12111737