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Novel imputation methods under stratified simple random sampling

Anoop Kumar, Shashi Bhushan, Manahil SidAhmed Mustafa, Ramy Aldallal, Hassan M. Aljohani, Fatimah A. Almulhim

2024Alexandria Engineering Journal12 citationsDOIOpen Access PDF

Abstract

This paper addresses some classes of combined and separate imputation methods (CSIMs) of the population mean under stratified simple random sampling (SSRS) along with their characteristics. To the best of our knowledge, these imputation methods (IMs) have yet not been studied by any author under SSRS, hence these IMs are called ‘novel’. In addition, the existing CSIMs are distinguished as the members of the suggested CSIMs, respectively. The theoretical conditions under which the proposed IMs perform better are obtained by comparing the proposed IMs with the existing IMs. To validate the theoretical findings, the numerical and simulation studies are conducted on real and artificial populations, respectively.

Topics & Concepts

Simple random sampleStratified samplingImputation (statistics)Computer scienceSimple (philosophy)Data miningSampling (signal processing)PopulationStatisticsPattern recognition (psychology)Missing dataMathematicsArtificial intelligenceMachine learningSociologyPhilosophyEpistemologyComputer visionDemographyFilter (signal processing)Survey Sampling and Estimation TechniquesBayesian Methods and Mixture ModelsStatistical Distribution Estimation and Applications
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