Some efficient ratio-type exponential estimators using the Robust regression’s Huber M-estimation function.

Autor: Yadav, Vinay Kumar, Prasad, Shakti
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Zdroj: Communications for Statistical Applications & Methods; May2024, Vol. 31 Issue 3, p291-308, 18p
Abstrakt: The current article discusses ratio type exponential estimators for estimating the mean of a finite population in sample surveys. The estimators uses robust regression’s Huber M-estimation function, and their bias as well as mean squared error expressions are derived. It was campared with Kadilar, Candan, and Cingi (Hacet J Math Stat, 36, 181–188, 2007) estimators. The circumstances under which the suggested estimators perform better than competing estimators are discussed. Five different population datasets with a well recognized outlier have been widely used in numerical and simulation-based research. These thorough studies seek to provide strong proof to back up our claims by carefully assessing and validating the theoretical results reported in our study. The estimators that have been proposed are intended to significantly improve both the efficiency and accuracy of estimating the mean of a finite population. As a result, the results that are obtained from statistical analyses will be more reliable and precise. [ABSTRACT FROM AUTHOR]
Databáze: Complementary Index