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Compromised imputation based mean estimators using robust quantile regression

Malik Muhammad Anas, Zhensheng Huang, Usman Shahzad, Tolga Zaman, Shabnam Shahzadi

2022Communication in Statistics- Theory and Methods32 citationsDOI

Abstract

Missing information is a typical issue in sampling surveys. The analysts have perceived that statistical inference possibly ruined due to occurrence of non-response. Ratio type regression estimators under simple random sampling (SRS) scheme for estimating the population mean are commonly used when some of the data suffered with the issue of missingness. It is worth noting that this class is based on ordinary least square regression coefficient which is not suitable when extreme values present in the data set. In this research, primarily a modified class of estimators is presented by adapting the idea of Zaman and Bulut. Later on, a class of quantile regression type estimators is defined which is an effective technique in presence of extreme observations. The utilization of quantile regression in the idea of Zaman and Bulut’s work empowered the proposed class of estimators for the estimation of population mean especially for missingness in the data. For mean square error (MSE), the hypothetical equations are also formulated for adapted and proposed estimators, on the basis of three possible cases of missingness. To justify the proposed work these hypothetical innovations are illustrated by the numerical demonstrations.

Topics & Concepts

Quantile regressionStatisticsImputation (statistics)EstimatorQuantileRobust regressionRegressionEconometricsMathematicsComputer scienceMissing dataAdvanced Statistical Methods and ModelsAdvanced Statistical Process MonitoringStatistical Methods and Inference
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