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Small area estimation of general parameters under complex sampling designs

机译:复杂采样设计下的一般参数的小面积估计

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When the probabilities of selecting individuals (units) for the sample depend on the outcome values, the selection mechanism is said to be informative. Under informative selection, individuals with certain outcome values appear more often in the sample and, as a consequence, usual inference based on the actual sample without appropriate weighting might be strongly biased. An extension of the empirical best (EB) method for estimation of general non-linear parameters in small areas that handles informative selection by incorporating the sampling weights is proposed. Properties of this new method under complex sampling designs, including informative selection, are analyzed. Results confirm that the proposed weighted estimators significantly reduce the bias of unweighted EB estimators under informative sampling, and compare favorably under non-informative sampling. The proposed method is illustrated through an application to poverty mapping in a State from Mexico. (C) 2017 Elsevier B.V. All rights reserved.
机译:When the probabilities of selecting individuals (units) for the sample depend on the outcome values, the selection mechanism is said to be informative.在信息选择下,具有某些结果值的个体在样本中更常见,因此,基于实际样本的常用推断可能很大偏见。提出了通过结合采样权重的小区域中用于处理信息化选择的小区域中的普通非线性参数的经验最佳(EB)方法的扩展。分析了在复杂的采样设计下的这种新方法的特性,包括信息性选择。结果证实,所提出的加权估计值明显减少了非线性采样下的未加权EB估计的偏差,并在非信息采样下比较。所提出的方法通过应用于来自墨西哥的状态的贫困映射来说明。 (c)2017 Elsevier B.v.保留所有权利。

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