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An introduction to sensible constraints for the imputation of missing values

机译:介绍合理的约束的归责缺失值

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摘要

Motivated by Haq et al. (2017), Mohamed et al. (2018) and some recent developments for the estimation of finite population mean, we propose a new design based imputation procedure for the imputation of missing values by applying some sensible constraints on the study and the auxiliary variables, respectively. The proposed design is considered under two assumptions: (i) the study variable is a non-sensitive variable that the measurements on the study variable do not create any embarrassment during personal interview and (ii) the study variable is a sensitive variable where the measurement errors are introduced due to some untruthful responses. These measurement errors are minimized up to some extend by using the scrambling response models. The proposed imputed values are obtained by the dual use of the auxiliary information leading to a consistent estimator that seems like the linear regression method of imputation. Expressions for the mean square error (MSE) are obtained up to the first order approximation. Finally, simulation studies are carried out in favor of the proposed estimators.
机译:Motivated by Haq科幻片阿尔。(2017),科幻片Mohamed al》上。(2018)和最近的一些进展估计有限总体的意思是,我们建议一个新的设计归责过程为基础通过应用一些归责缺失值对研究和合理的约束辅助变量,分别。设计被认为是在两个假设:(i)研究变量是一个不变量研究变量的测量在个人不创建任何尴尬采访中,(2)研究变量敏感的变量的测量误差介绍了由于一些不真实的反应。一些这些测量误差最小化扩展使用纷纷响应模型。该得到的估算值双重使用辅助信息导致的一个一致的估计量,似乎是线性的归责的回归方法。均方误差(MSE)得到一阶近似。模拟研究的进行提出的估计。

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