采用乘法推算调查数据的小地区

IF 0.5 4区 数学 Q4 SOCIAL SCIENCES, MATHEMATICAL METHODS
Marina Runge, Timo Schmid
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引用次数: 0

摘要

在本文中,我们提出了一个利用多重估算调查数据进行小范围估算的框架。许多统计调查都存在以下问题:(a) 由于问题敏感和回复负担,无回复率较高;(b) 由于预算限制,样本量太小,无法对(计划外)分类水平进行可靠估算。处理缺失值的一种方法是根据模型用几个可信的/估计的值来代替。当直接估算不精确时,可采用小区域估算,如 Fay 和 Herriot 的模型,来估算按区域分列的指标。本文提出的框架可同时处理多重估算值和不精确的直接估算值。特别是,我们扩展了费-赫里奥特转换模型的一般类别,以考虑多重估算带来的额外不确定性。我们推导出 Fay-Herriot 模型的三种特殊转换情况,并提供了点误差和均方误差估计值。根据不同的情况,均方误差是通过解析解或重采样方法估算出来的。在受控环境中进行的综合模拟表明,所提出的方法在偏差和均方误差方面能得出可靠而精确的结果。该方法通过一个使用欧洲财富数据的真实数据实例进行了说明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Small Area with Multiply Imputed Survey Data
In this article, we propose a framework for small area estimation with multiply imputed survey data. Many statistical surveys suffer from (a) high nonresponse rates due to sensitive questions and response burden and (b) too small sample sizes to allow for reliable estimates on (unplanned) disaggregated levels due to budget constraints. One way to deal with missing values is to replace them by several plausible/imputed values based on a model. Small area estimation, such as the model by Fay and Herriot, is applied to estimate regionally disaggregated indicators when direct estimates are imprecise. The framework presented tackles simultaneously multiply imputed values and imprecise direct estimates. In particular, we extend the general class of transformed Fay-Herriot models to account for the additional uncertainty from multiple imputation. We derive three special cases of the Fay-Herriot model with particular transformations and provide point and mean squared error estimators. Depending on the case, the mean squared error is estimated by analytic solutions or resampling methods. Comprehensive simulations in a controlled environment show that the proposed methodology leads to reliable and precise results in terms of bias and mean squared error. The methodology is illustrated by a real data example using European wealth data.
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来源期刊
Journal of Official Statistics
Journal of Official Statistics STATISTICS & PROBABILITY-
CiteScore
1.90
自引率
9.10%
发文量
39
审稿时长
>12 weeks
期刊介绍: JOS is an international quarterly published by Statistics Sweden. We publish research articles in the area of survey and statistical methodology and policy matters facing national statistical offices and other producers of statistics. The intended readers are researchers or practicians at statistical agencies or in universities and private organizations dealing with problems which concern aspects of production of official statistics.
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