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Small area estimation under a spatially non-linear model

机译:空间非线性模型下的小面积估计

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We describe a methodology for small area estimation of counts that assumes an area level version of a nonparametric generalized linear mixed model with a mean structure defined using spatial splines. The proposed method represents an alternative to other small area estimation methods based on area level spatial models that are designed for both spatially stationary and spatially non-stationary populations. We develop an estimator for the mean squared error of the proposed small area predictor as well as an approach for testing for the presence of spatial structure in the data and evaluate both the proposed small area predictor and its mean squared error estimator via simulations studies. Our empirical results show that when data are spatially non-stationary the proposed small area predictor outperforms other area level estimators in common use and that the proposed mean squared error estimator tracks the actual mean squared error reasonably well, with confidence intervals based on it achieving close to nominal coverage. An application to poverty estimation using household consumer expenditure survey data from 2011-12 collected by the national sample survey office of India is presented. (C) 2018 Elsevier B.V. All rights reserved.
机译:我们描述了用于小区估计的计数的方法,该计数是非参数广义线性混合模型的区域级版本,其具有使用空间样条定义的平均结构。该方法代表了基于面积级空间模型的其他小区域估计方法的替代,该区域级空间模型对于空间静止和空间的非固定群体设计。我们开发了所提出的小区域预测器的平均平方误差的估计器,以及用于在数据中存在空间结构的存在的方法,并通过模拟研究评估所提出的小面积预测器及其平均平方误差估计。我们的经验结果表明,当数据在空间上是非静止时,所提出的小区域预测器占外的其他区域级别估计器,并且所提出的平均误差估计器合理地追踪实际平均平方误差,其置信间隔基于其实现关闭标称覆盖范围。提出了由印度国家样本调查办公室收集的2011-12家庭消费支出调查数据的贫困估计。 (c)2018 Elsevier B.v.保留所有权利。

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