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Estimation of mean squared prediction error of empirically spatial predictor of small area means under a linear mixed model

机译:线性混合模型下小区尺寸尺寸平时预测误差估计尺寸平面预测误差

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摘要

Policy decisions regarding allocation of resources to subgroups in a population, called small areas, are based on reliable predictors of their underlying parameters. However, the information is collected at a different scale than these subgroups. Hence, we need to predict characteristics of the subgroups based on the coarser scale data. In view of this, there is a growing demand for reliable small area predictors by borrowing information from other related sources. For this purpose, mixed models have been commonly used in small area estimation assuming independent small areas. There are many situations, however, that the small area parameters are related to their locations. For instance, it is an interest of policy makers (and public) to know the spatial pattern of a chronic disease (e.g., asthma) to identify small areas with high risk of disease for possible preventions. In this paper, we propose small area models in the class of spatial linear mixed models to be able to predict small area parameters and also to obtain corresponding mean squared prediction error (MSPE). We also provide unbiased estimators of MSPE of small area predictors using Taylor series expansion and parametric bootstrap methods. In our simulations, we show that our MSPE estimators using Taylor expansion and parametric bootstrap perform very well in terms of precision of small area predictors. Performance of our proposed approach is also evaluated through a real application of physician visits for Total Respiratory Morbidity conditions in Manitoba, Canada. (C) 2020 Elsevier B.V. All rights reserved.
机译:有关资源分配给人口中资源的政策决定,称为小区域,是基于其潜在参数的可靠预测因子。但是,信息以与这些子组的不同量表收集的信息。因此,我们需要基于较粗略的尺度数据来预测子组的特征。鉴于此,通过从其他相关来源借用信息,对可靠的小区域预测因子的需求不断增长。为此目的,假设独立的小区域,混合模型通常用于小区估计。然而,有许多情况,小面积参数与它们的位置有关。例如,它是政策制定者(和公共)的兴趣,以了解慢性疾病(例如,哮喘)的空间模式,以确定可能预防疾病风险高的小区域。在本文中,我们提出了在空间线性混合模型等类中的小面积模型,以便能够预测小区域参数,并获得相应的平均平方预测误差(MSPE)。我们还使用Taylor系列膨胀和参数释放方法提供小区预测器MSPE的无偏估计。在我们的模拟中,我们表明我们的MSPE估计,在小区预测器的精度方面,使用泰勒扩展和参数释放的估算值表现得非常好。拟议方法的表现也通过实际应用医生访问加拿大Manitoba的总呼吸道疾病条件进行了评估。 (c)2020 Elsevier B.V.保留所有权利。

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