Hung-Tsung Hsiao, Chou-Wen Wang, I.-Chien Liu, Ko-Lun Kung
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引用次数: 0
摘要
在本文中,我们提出了一种具有队列效应的死亡率改进模型神经网络(NN)结构。然后,我们扩展了死亡率改善神经网络模型,以考虑自回归效应,从而使死亡率改善取决于滞后死亡率。我们的 NN 模型设置的优势在于,NN 模型隐含了时期效应和队列效应的参数估计,因此,无需为时期效应和队列效应选择和估计合适的时间序列模型等额外步骤,即可获得死亡率预测结果。我们的实证结果表明,基于人类死亡率数据库中从 1950 年起年龄跨度为 55-90 岁的 48 个人群的完整观测数据,具有队列效应和自回归效应的 NN 模型提高了死亡率预测的准确性,并提供了更好的预测性能。
Mortality improvement neural-network models with autoregressive effects
In this paper, we propose a neural network (NN) architecture of mortality improvement model with cohort effect. We then extend the mortality improvement NN model to consider autoregressive effects, which allows mortality improvement to depend on the lagged mortality rates. The advantage of our NN model setup is that the parameters of period and cohort effects are implicitly estimated by the NN models, and hence, the mortality projection can be obtained without taking the extra steps of selecting and estimating the suitable time-series model for period and cohort effects. Our empirical results suggests that, based on 48 populations in the Human Mortality Database with complete sets of observations from 1950 with the age span of 55–90, the NN models with cohort and autoregressive effects improve the forecast accuracy of mortality rate projections and provide better prediction performance.