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Calibrated propensity score method for survey nonresponse in cluster sampling

机译:整群抽样中调查无响应的校准倾向得分方法

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Weighting adjustment is commonly used in survey sampling to correct for unit nonresponse. In cluster sampling, the missingness indicators are often correlated within clusters and the response mechanism is subject to cluster-specific nonignorable missingness. Based on a parametric working model for the response mechanism that incorporates cluster-specific nonignorable missingness, we propose a method of weighting adjustment. We provide a consistent estimator of the mean or totals in cases where the study variable follows a generalized linear mixed-effects model. The proposed method is robust in the sense that the consistency of the estimator does not require correct specification of the functional forms of the response and outcome models. A consistent variance estimator based on Taylor linearization is also proposed. Numerical results, including a simulation and a real-data application, are presented.
机译:权重调整通常用于调查抽样中,以纠正单位无响应。在聚类抽样中,缺失指标通常与聚类内相关,并且响应机制受特定于聚类的不可忽略缺失的影响。基于包含群集特定的不可忽略缺失的响应机制的参数工作模型,我们提出了一种加权调整方法。在研究变量遵循广义线性混合效应模型的情况下,我们提供均值或总计的一致估计量。在估计器的一致性不需要正确指定响应和结果模型的功能形式的意义上,所提出的方法是健壮的。还提出了基于泰勒线性化的一致性方差估计器。给出了数值结果,包括仿真和实际数据应用。

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