Leveraging deep neural networks to estimate age-specific mortality from life expectancy at birth

IF 2.1 3区 社会学 Q2 DEMOGRAPHY
A. Nigri, Susanna Levantesi, J. Aburto
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引用次数: 1

Abstract

Life expectancy is one of the most informative indicators of population health and de-velopment. Its stability, which has been observed over time, has made the prediction and forecasting of life expectancy an appealing area of study. However, predicted or estimated values of life expectancy do not tell us about age-specific mortality. Reliable estimates of age-specific mortality are essential in the study of health inequalities, well-being and to calculate other demographic indicators. This task comes with several difficulties, including a lack of reliable data in many populations. Models that re-late levels of life expectancy to a full age-specific mortality profile are therefore important but scarce. from akin to de-mography’s provides reliable estimates of age-specific mortality for the United States, Italy, Japan, and Russia using data from the Human Mortality Database. We show how the DNN model could be used to estimate age-specific mortality for countries without age-specific data using neighbouring information or populations with similar mortality dynamics. We take a step forward among demographic methods, offering a multi-population indirect estimation based on a data driven-approach, that can be fitted to many populations simultaneously, using DNN optimisation approaches.
利用深度神经网络从出生时的预期寿命来估计特定年龄的死亡率
预期寿命是人口健康和发展的最具信息量的指标之一。随着时间的推移,它的稳定性已经被观察到,这使得预期寿命的预测和预测成为一个有吸引力的研究领域。然而,预期寿命的预测值或估计值并不能告诉我们特定年龄的死亡率。在研究健康不平等、福祉和计算其他人口指标方面,对特定年龄死亡率的可靠估计至关重要。这项任务有几个困难,包括在许多人群中缺乏可靠的数据。因此,将预期寿命水平与特定年龄的全面死亡率概况联系起来的模型很重要,但很少。从类似于人口统计学的角度提供了美国、意大利、日本和俄罗斯特定年龄死亡率的可靠估计,使用的数据来自人类死亡率数据库。我们展示了DNN模型如何使用邻近信息或具有相似死亡率动态的人口来估计没有特定年龄数据的国家的特定年龄死亡率。我们在人口统计方法中向前迈进了一步,提供了基于数据驱动方法的多人口间接估计,可以同时适用于许多人口,使用DNN优化方法。
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来源期刊
Demographic Research
Demographic Research DEMOGRAPHY-
CiteScore
3.90
自引率
4.80%
发文量
63
审稿时长
28 weeks
期刊介绍: Demographic Research is a free, online, open access, peer-reviewed journal of the population sciences published by the Max Planck Institute for Demographic Research in Rostock, Germany. The journal pioneers an expedited review system. Contributions can generally be published within one month after final acceptance.
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