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Estimation of the Mean of a Sensitive Variable in the Presence of Auxiliary Information

机译:估计辅助信息存在中敏感变量的平均值

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Sousa et al. (2010) introduced a ratio estimator for the mean of a sensitive variable and showed that this estimator performs better than the ordinary mean estimator based on a randomized response technique (RRT). In this article, we introduce a regression estimator that performs better than the ratio estimator even for modest correlation between the primary and the auxiliary variables. The underlying assumption is that the primary variable is sensitive in nature but a non sensitive auxiliary variable exists that is positively correlated with the primary variable. Expressions for the Bias and MSE (Mean Square Error) are derived based on (he first order of approximation. It is shown that the proposed regression estimator performs better than the ratio estimator and the ordinary RRT mean estimator (that does not utilize the auxiliary information). We also consider a generalized regression-cum-ratio estimator that has even smaller MSE. An extensive simulation study is presented to evaluate the performances of the proposed estimators in relation to other estimators in the study. The procedure is also applied to some financial data: purchase orders (a sensitive variable) and gross turnover (a non sensitive variable) in 2009 for a population of 5,336 companies in Portugal from a survey on Information and Communication Technologies (ICT) usage.
机译:Sousa等。 (2010)向敏感变量的平均值引入了比率估计器,并显示该估计器基于基于随机响应技术(RRT)的普通平均估计器更好地执行。在本文中,我们介绍了一个回归估计器,即使主和辅助变量与辅助变量之间的适度相关性,也可以更好地执行比率估计器。底层假设是主变量本质上是敏感的,但是存在与主变量正相关的非敏感辅助变量。基于(他第一阶近似的偏差和MSE(均方误差)的表达式。显示所提出的回归估计器比比率估计器和普通的RRT平均估计器更好地执行(不利用辅助信息)。我们还考虑一个具有更小的MSE的广义回归 - 截图估计。提出了广泛的仿真研究,以评估所提出的估计与研究中的其他估计人员的性能。该程序也适用于一些财务数据:2009年购买订单(敏感变量)和总营业额(一个非敏感变量),葡萄牙5,336家公司从关于信息和通信技术(ICT)使用的调查。

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