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New comprehensive class of estimators for population proportion using auxiliary attribute: Simulation and an application

H. E. Semary, Sohaib Ahmad, Ibrahim Elbatal, Christophe Chesneau, Mohammed Elgarhy, Ehab M. Almetwally

2024Alexandria Engineering Journal20 citationsDOIOpen Access PDF

Abstract

In this article, we present a comprehensive class of estimators designed for population proportion estimation by leveraging auxiliary attributes within the framework of simple random sampling. The proposed class encompasses a diverse range of estimators, each of which undergoes a thorough examination. We provide numerical expressions for both bias and mean squared error, employing a first-order approximation. The significance of the introduced class of estimators is underscored through a detailed analysis of numerical results. These findings demonstrate the marked superiority of the suggested estimators over their existing counterparts in terms of mean squared error and percentage relative efficiency, as observed in both actual and simulated data scenarios. Consequently, we advocate for the adoption of the proposed class of estimators, asserting its potential to yield improved outcomes when estimating population proportions through the utilization of simple random sampling techniques.

Topics & Concepts

EstimatorSimple random sampleMean squared errorClass (philosophy)MathematicsStatisticsPopulation meanSampling (signal processing)PopulationRange (aeronautics)EfficiencyExtremum estimatorBootstrapping (finance)Simple (philosophy)Sample size determinationComputer scienceEconometricsM-estimatorArtificial intelligenceEngineeringFilter (signal processing)PhilosophyComputer visionEpistemologyDemographySociologyAerospace engineeringSurvey Sampling and Estimation TechniquesStatistical Methods and Bayesian Inference
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