比例的两阶段贝叶斯小面积估计方法

IF 1.7 3区 数学 Q1 STATISTICS & PROBABILITY
James Hogg, Jessica Cameron, Susanna Cramb, Peter Baade, Kerrie Mengersen
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引用次数: 0

摘要

随着数字地图集在传播空间变化方面的普及,对可靠的小面积估算的需求日益增加。然而,当数据非常稀少或需要对人口极少的地区进行估算时,目前的小面积估算方法就会遇到各种建模问题。这些问题在建立比例模型时尤为突出。此外,最近的研究表明,在个体和区域两个层面建模都有很大的好处。我们提出了一种两阶段贝叶斯分层小区域比例估算方法,该方法可以考虑调查设计,减少直接估算的不稳定性,并为没有调查数据的小区域生成流行率估算。通过模拟研究,我们表明,与现有的贝叶斯小范围估计方法相比,我们的方法可以在各种数据条件下(包括非常稀少和不稳定的数据)提供最佳的比例预测性能(贝叶斯平均相对均方根误差、平均绝对相对偏差和覆盖率)。为了在实践中评估该模型,我们使用 2017-2018 年全国健康调查数据和 2016 年人口普查数据,比较了澳大利亚 1630 个小地区当前吸烟率的模型估计值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Two-stage Bayesian Small Area Estimation Approach for Proportions

A Two-stage Bayesian Small Area Estimation Approach for Proportions

With the rise in popularity of digital Atlases to communicate spatial variation, there is an increasing need for robust small area estimates. However, current small area estimation methods suffer from various modelling problems when data are very sparse or when estimates are required for areas with very small populations. These issues are particularly heightened when modelling proportions. Additionally, recent work has shown significant benefits in modelling at both the individual and area levels. We propose a two-stage Bayesian hierarchical small area estimation approach for proportions that can account for survey design, reduce direct estimate instability and generate prevalence estimates for small areas with no survey data. Using a simulation study, we show that, compared with existing Bayesian small area estimation methods, our approach can provide optimal predictive performance (Bayesian mean relative root mean squared error, mean absolute relative bias and coverage) of proportions under a variety of data conditions, including very sparse and unstable data. To assess the model in practice, we compare modelled estimates of current smoking prevalence for 1,630 small areas in Australia using the 2017–2018 National Health Survey data combined with 2016 census data.

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来源期刊
International Statistical Review
International Statistical Review 数学-统计学与概率论
CiteScore
4.30
自引率
5.00%
发文量
52
审稿时长
>12 weeks
期刊介绍: International Statistical Review is the flagship journal of the International Statistical Institute (ISI) and of its family of Associations. It publishes papers of broad and general interest in statistics and probability. The term Review is to be interpreted broadly. The types of papers that are suitable for publication include (but are not limited to) the following: reviews/surveys of significant developments in theory, methodology, statistical computing and graphics, statistical education, and application areas; tutorials on important topics; expository papers on emerging areas of research or application; papers describing new developments and/or challenges in relevant areas; papers addressing foundational issues; papers on the history of statistics and probability; white papers on topics of importance to the profession or society; and historical assessment of seminal papers in the field and their impact.
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