Robust prediction of domain compositions from uncertain data using isometric logratio transformations in a penalized multivariate Fay–Herriot model

IF 1.4 3区 数学 Q2 STATISTICS & PROBABILITY Statistica Neerlandica Pub Date : 2021-06-28 DOI:10.1111/stan.12253
J. Krause, J. P. Burgard, D. Morales
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引用次数: 2

Abstract

Assessing regional population compositions is an important task in many research fields. Small area estimation with generalized linear mixed models marks a powerful tool for this purpose. However, the method has limitations in practice. When the data are subject to measurement errors, small area models produce inefficient or biased results since they cannot account for data uncertainty. This is particularly problematic for composition prediction, since generalized linear mixed models often rely on approximate likelihood inference. Obtained predictions are not reliable. We propose a robust multivariate Fay–Herriot model to solve these issues. It combines compositional data analysis with robust optimization theory. The nonlinear estimation of compositions is restated as a linear problem through isometric logratio transformations. Robust model parameter estimation is performed via penalized maximum likelihood. A robust best predictor is derived. Simulations are conducted to demonstrate the effectiveness of the approach. An application to alcohol consumption in Germany is provided.
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在惩罚多元Fay-Herriot模型中使用等距logratio变换从不确定数据中稳健预测域组成
区域人口构成评估是许多研究领域的重要任务。基于广义线性混合模型的小面积估计是实现这一目标的有力工具。然而,该方法在实践中存在局限性。当数据受到测量误差的影响时,小面积模型会产生低效或有偏差的结果,因为它们不能解释数据的不确定性。这对于成分预测尤其成问题,因为广义线性混合模型通常依赖于近似似然推断。获得的预测是不可靠的。我们提出了一个鲁棒的多元Fay-Herriot模型来解决这些问题。它将成分数据分析与鲁棒优化理论相结合。通过等距logratio变换,将组合物的非线性估计重新表述为线性问题。通过惩罚极大似然进行鲁棒模型参数估计。得到了一个鲁棒的最佳预测器。仿真结果验证了该方法的有效性。提供了一份关于德国酒精消费的申请。
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来源期刊
Statistica Neerlandica
Statistica Neerlandica 数学-统计学与概率论
CiteScore
2.60
自引率
6.70%
发文量
26
审稿时长
>12 weeks
期刊介绍: Statistica Neerlandica has been the journal of the Netherlands Society for Statistics and Operations Research since 1946. It covers all areas of statistics, from theoretical to applied, with a special emphasis on mathematical statistics, statistics for the behavioural sciences and biostatistics. This wide scope is reflected by the expertise of the journal’s editors representing these areas. The diverse editorial board is committed to a fast and fair reviewing process, and will judge submissions on quality, correctness, relevance and originality. Statistica Neerlandica encourages transparency and reproducibility, and offers online resources to make data, code, simulation results and other additional materials publicly available.
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