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首页> 外文期刊>South African statistical journal >CALIBRATING ON PRINCIPAL COMPONENTS IN THE PRESENCE OF MULTIPLE AUXILIARY VARIABLES FOR NONRESPONSE ADJUSTMENT
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CALIBRATING ON PRINCIPAL COMPONENTS IN THE PRESENCE OF MULTIPLE AUXILIARY VARIABLES FOR NONRESPONSE ADJUSTMENT

机译:存在多个辅助变量的无响应调整中的主成分校准

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摘要

Nonresponse is a major impediment to valid inference in sample surveys. In the nonre-sponse scenario, the driver of successful estimation is the efficient use of available auxiliary information. As electronic devices provide considerable data storage capacities, at the estimation stage it is natural for survey statisticians to face large datasets of auxiliary variables. It is unwise to use all available data as doing so may lead to poor estimators, especially if some variables are strongly correlated. Furthermore, selecting a subset of available auxiliary variables may not be the best alternative given the issues related to selection criteria. In this paper, we propose reducing the dimensions of the original set of auxiliary variables by using principal components. The use of principal components in place of the original auxiliary variables is evaluated via two calibration approaches, linear calibration using no explicit response model and propensity calibration of a known response model. For the latter, we propose selecting components based on their canonical correlation with the model variables. The results of two simulation studies suggest that using principal components is appropriate, as it offers the great advantage of reducing the computational burden.
机译:无响应是样本调查中进行有效推断的主要障碍。在非响应方案中,成功估算的驱动因素是有效使用可用辅助信息。由于电子设备提供了可观的数据存储容量,因此在估算阶段,调查统计人员自然要面对大量辅助变量数据集。使用所有可用数据是不明智的,因为这样做可能会导致估算值不佳,尤其是在某些变量之间存在高度相关性的情况下。此外,鉴于与选择标准有关的问题,选择可用辅助变量的子集可能不是最佳选择。在本文中,我们建议通过使用主成分来减少原始辅助变量集的维数。通过两种校准方法来评估使用主成分代替原始辅助变量:不使用显式响应模型的线性校准和已知响应模型的倾向性校准。对于后者,我们建议根据组件与模型变量的典型相关性来选择组件。两项仿真研究的结果表明,使用主成分是合适的,因为它具有减少计算负担的巨大优势。

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