长期死亡率预测中的机器学习

Yang Qiao, Chou-Wen Wang, Wenjun Zhu
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引用次数: 0

摘要

我们提出了一种新的基于机器学习的长期死亡率预测框架。该框架基于邻近预测、模型集合和树增强的思想,能显著提高长期死亡率预测的准确性。此外,该框架还利用邻近年龄和队列的信息解决了长期预测中的收缩模式难题。我们利用人类死亡率数据库中的不同国家和地区进行了广泛的实证分析。结果表明,与经典的随机死亡率模型相比,该框架将 20 年预测的平均绝对百分比误差(MAPE)降低了近 50%,其表现也优于基于深度学习的基准。此外,纳入多个人群的死亡率数据可以进一步提高该框架的长期预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Machine learning in long-term mortality forecasting

We propose a new machine learning-based framework for long-term mortality forecasting. Based on ideas of neighboring prediction, model ensembling, and tree boosting, this framework can significantly improve the prediction accuracy of long-term mortality. In addition, the proposed framework addresses the challenge of a shrinking pattern in long-term forecasting with information from neighboring ages and cohorts. An extensive empirical analysis is conducted using various countries and regions in the Human Mortality Database. Results show that this framework reduces the mean absolute percentage error (MAPE) of the 20-year forecasting by almost 50% compared to classic stochastic mortality models, and it also outperforms deep learning-based benchmarks. Moreover, including mortality data from multiple populations can further enhance the long-term prediction performance of this framework.

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