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Small area estimation under a measurement error bivariate Fay-Herriot model

机译:测量误差生物粉末 - 海水模型下的小区估计

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摘要

The bivariate Fay-Herriot model is an area-level linear mixed model that can be used for estimating the domain means of two correlated target variables. Under this model, the dependent variables are direct estimators calculated from survey data and the auxiliary variables are true domain means obtained from external data sources. Administrative registers do not always give good auxiliary variables, so that statisticians sometimes take them from alternative surveys and therefore they are measured with error. We introduce a variant of the bivariate Fay-Herriot model that takes into account the measurement error of the auxiliary variables and we give fitting algorithms to estimate the model parameters. Based on the new model, we introduce empirical best predictors of domain means and we propose a parametric bootstrap procedure for estimating the mean squared error. We finally give an application to estimate poverty proportions and gaps in the Spanish Living Condition Survey, with auxiliary information from the Spanish Labour Force Survey.
机译:双抗体-Herriot模型是一种区域级线性混合模型,可用于估计两个相关目标变量的域装置。在该模型下,从属变量是从调查数据计算的直接估计,辅助变量是从外部数据源获得的真实域手段。管理寄存器并不总是给出良好的辅助变量,因此统计学人员有时将它们从替代调查中取出,因此它们以错误测量。我们介绍了一系列生物的Fay-Herriot模型的变种,考虑了辅助变量的测量误差,我们提供拟合算法来估计模型参数。基于新模型,我们介绍了域的经验最佳预测因子,并提出了一个参数训练程序,用于估计平均平方误差。我们终于申请估计西班牙生活条件调查中的贫困比例和差距,来自西班牙劳动力调查的辅助信息。

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