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Small area estimation using skew normal models

机译:使用偏态法线模型进行小面积估计

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摘要

Two connected extensions of the Fay-Herriot small area level model that are of practical and theoretical interest are proposed. The first extension allows for the sampling error to be non-symmetrically distributed. This is important for cases in which the sample sizes in the areas are not large enough to rely on the central limit theorem (CLT). This is dealt with by assuming that the sample error is skew normally distributed. The second extension proposes to jointly model the direct survey estimator and its respective variance estimator, borrowing strength from all areas. In this way, all sources of uncertainties are taken into account. The proposed model has been applied to a real data set and compared with the usual Fay-Herriot model under the assumption of unknown sampling variances. A simulation study was carried out to evaluate the frequentist properties of the proposed model. The evaluation studies show that the proposed model is more efficient for small area predictions under skewed data than the customarily employed normal area model.
机译:提出了具有实际和理论意义的Fay-Herriot小面积水平模型的两个连接扩展。第一扩展允许采样误差被非对称地分布。这对于区域中的样本量不足以依赖于中心极限定理(CLT)的情况非常重要。这可以通过假设样本误差正态分布偏斜来解决。第二个扩展提议结合直接调查估算器及其各自的方差估算器,从所有领域借鉴实力。通过这种方式,可以考虑所有不确定因素。所提出的模型已应用于实际数据集,并在假设抽样方差未知的情况下与通常的Fay-Herriot模型进行了比较。进行了仿真研究,以评估所提出模型的频繁性。评估研究表明,所提出的模型对于偏斜数据下的小面积预测比常规采用的正常面积模型更有效。

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