利用时空模型对小地区死亡率进行贝叶斯预测。

IF 3.6 1区 社会学 Q1 DEMOGRAPHY
Julius Goes
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引用次数: 0

摘要

估算和预测小地区的国家以下死亡率是研究健康不平等问题的重要规划工具。当数据存在噪声时,标准方法的效果并不理想,而这正是国家以下数据集的典型表现。因此,很难获得可靠的估计值。我提出了一个贝叶斯层次模型框架,用于预测小规模或国家以下级别的死亡率。通过结合人口学和流行病学的观点,经典的死亡率建模框架得到了扩展,增加了捕捉地区异质性的空间部分。相邻地区的信息被集中起来,并按时间和年龄进行平滑处理。为了使预测更加稳健,并解决模型选择问题,我们考虑了一种贝叶斯版本的堆叠方法,即使用 "留出未来 "验证法。我运用这种方法对德国巴伐利亚州 96 个地区的死亡率进行了预测,并按年龄和性别进行了分类。预测的不确定性以预测区间的形式提供。通过后验预测检查,我发现模型捕捉到了基本特征,适合预测手头的数据。在保留的数据上,我的预测结果优于缺乏地区成分的标准模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian Forecasting of Mortality Rates for Small Areas Using Spatiotemporal Models.

Estimation and prediction of subnational mortality rates for small areas are essential planning tools for studying health inequalities. Standard methods do not perform well when data are noisy, a typical behavior of subnational datasets. Thus, reliable estimates are difficult to obtain. I present a Bayesian hierarchical model framework for prediction of mortality rates at a small or subnational level. By combining ideas from demography and epidemiology, the classical mortality modeling framework is extended to include an additional spatial component capturing regional heterogeneity. Information is pooled across neighboring regions and smoothed over time and age. To make predictions more robust and address the issue of model selection, a Bayesian version of stacking is considered using leave-future-out validation. I apply this method to forecast mortality rates for 96 regions in Bavaria, Germany, disaggregated by age and sex. Uncertainty surrounding the forecasts is provided in terms of prediction intervals. Using posterior predictive checks, I show that the models capture the essential features and are suitable to forecast the data at hand. On held-out data, my predictions outperform those of standard models lacking a regional component.

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来源期刊
Demography
Demography DEMOGRAPHY-
CiteScore
5.90
自引率
2.90%
发文量
82
期刊介绍: Since its founding in 1964, the journal Demography has mirrored the vitality, diversity, high intellectual standard and wide impact of the field on which it reports. Demography presents the highest quality original research of scholars in a broad range of disciplines, including anthropology, biology, economics, geography, history, psychology, public health, sociology, and statistics. The journal encompasses a wide variety of methodological approaches to population research. Its geographic focus is global, with articles addressing demographic matters from around the planet. Its temporal scope is broad, as represented by research that explores demographic phenomena spanning the ages from the past to the present, and reaching toward the future. Authors whose work is published in Demography benefit from the wide audience of population scientists their research will reach. Also in 2011 Demography remains the most cited journal among population studies and demographic periodicals. Published bimonthly, Demography is the flagship journal of the Population Association of America, reaching the membership of one of the largest professional demographic associations in the world.
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