Improved Estimation of Finite Population Variance Using Dual Supplementary Information under Stratified Random Sampling
Sohaib Ahmad, Sardar Hussain, Javid Shabbir, Erum Zahid, Muhammad Aamir, Ronald Onyango
Abstract
In this article, we propose an improved estimator for finite population variance based on stratified sampling by using the auxiliary variable as well as the rank of the auxiliary variable. Expressions for the bias and the mean square error of the estimators are derived up to the first order of approximation. Four real data sets are used to measure the performances of estimators. Moreover, a simulation study is also conducted to observe the efficiency of the proposed variance estimator. The theoretical and numerical results show that the proposed estimator under stratified random sampling is more efficient as compared to the existing estimators.
Topics & Concepts
EstimatorStratified samplingMathematicsStatisticsPopulation varianceMean squared errorVariance (accounting)Simple random sampleSampling (signal processing)Minimum-variance unbiased estimatorRank (graph theory)Efficient estimatorVariable (mathematics)PopulationApplied mathematicsBias of an estimatorComputer scienceCombinatoricsMathematical analysisFilter (signal processing)AccountingDemographySociologyComputer visionBusinessSurvey Sampling and Estimation Techniques