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The Spatial Fay-Herriot Model in Poverty Estimation

机译:贫困估计中的空间费-赫里奥特模型

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Counteracting poverty is one of the objectives of the European Commission clearly emphasized in the Europe 2020 strategy. Conducting appropriate social policy requires knowledge of the extent of this phenomenon. Such information is provided through surveys on living conditions conducted by, among others, the Central Statistical Office (CSO). Nevertheless, the sample size in these surveys allows for a precise estimation of poverty rate only at a very general level - the whole country and regions. Small sample size at the lower level of spatial aggregation results in a large variance of obtained estimates and hence lower reliability. To obtain information in sparsely represented territorial sections, methods of small area estimation are used. Through using the information from other sources, such as censuses and administrative registers, it is possible to estimate distribution parameters with smaller variance than in the case of direct estimation.This paper attempts to estimate the poverty rate at LAU 1 level of Poland. This estimation will be possible through the use of data from different sources describing the living conditions of households and the use of the Fay-Herriot model with spatial correlation. As a result, estimates for previously unpublished levels of aggregation will be obtained.
机译:消除贫困是欧洲委员会在《欧洲2020年战略》中明确强调的目标之一。采取适当的社会政策需要了解这种现象的严重程度。此类信息是通过中央统计局(CSO)等进行的生活条件调查提供的。尽管如此,这些调查的样本量仅能在整个国家和地区的非常一般的水平上准确估计贫困率。在较低级别的空间聚合中,样本量较小,导致获得的估算值差异较大,因此可靠性较低。为了获得稀疏表示的区域中的信息,使用了小面积估计方法。通过使用人口普查和行政登记簿等其他来源的信息,可以估算与直接估算相比较小的方差分布参数。本文尝试估算波兰LAU 1级的贫困率。通过使用来自不同来源的描述家庭生活状况的数据以及使用具有空间相关性的Fay-Herriot模型,可以进行这种估计。结果,将获得以前未发布的聚合级别的估计值。

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