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'Optimal' calibration weights under unit nonresponse in survey sampling

机译:调查采样中单位非响应下的“最佳”校准权重

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High nonresponse is a very common problem in sample surveys today. In statistical terms we are worried about increased bias and variance of estimators for population quantities such as totals or means. Different methods have been suggested in order to compensate for this phenomenon. We can roughly divide them into imputation and calibration and it is the latter approach we will focus on here. A wide spectrum of possibilities is included in the class of calibration estimators. We explore linear calibration, where we suggest using a nonresponse version of the design-based optimal regression estimator. Comparisons are made between this estimator and a GREG type estimator. Distance measures play a very important part in the construction of calibration estimators. We show that an estimator of the average response propensity (probability) can be included in the "optimal" distance measure under nonresponse, which will help to reduce the bias of the resulting estimator. To illustrate empirically the theoretically derived results for the suggested estimators, a simulation study has been carried out. The population is called KYBOK and consists of clerical municipalities in Sweden, where the variables include financial as well as size measurements. The results are encouraging for the "optimal" estimator in combination with the estimated average response propensity, where the bias was reduced for most of the Poisson sampling cases in the study.
机译:高非响应是今天样本调查中的一个非常常见的问题。在统计术语中,我们担心估计的偏见和估算变异,例如总计或手段。已经提出了不同的方法以弥补这种现象。我们可以大致划分它们归于和校准,这是后一种方法,我们将专注于这里。校准估算仪类中包含广泛的可能性。我们探索线性校准,我们建议使用基于设计的最优回归估计器的非响应版本。在该估计器和Greg型估计器之间进行比较。距离测量在校准估算器的构建中起着非常重要的部分。我们表明,平均响应倾向(概率)的估计器可以包括在非响应下的“最佳”距离测量中,这将有助于降低所得估计器的偏差。为了凭经验地说明了建议估计的理论衍生结果,已经进行了模拟研究。这些人口被称为Kybok,由瑞典的文教局组成,变量包括财务以及尺寸测量。结果令“最佳”估计与估计的平均响应倾向组合,为研究中的大多数泊松抽样案件减少了偏差。

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