通过机器学习进行长寿风险管理:最新技术

Q2 Economics, Econometrics and Finance
Susanna Levantesi, A. Nigri, Gabriella Piscopo
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引用次数: 5

摘要

长寿风险管理是人寿保险业务的一个领域,人工智能的应用仍然不发达。本文回顾了最近关于该主题的精算文献的主要结果,以引起人们对机器学习在预测死亡率方面的潜力的关注,从而改善长寿风险的量化和管理,这对养老金合同或健康保险产品中嵌入的长期期限和终身保证期权的寿险产品的定价具有实际意义。人工智能方法在死亡率预测中的应用改善了传统模型的拟合和预测。特别提出了分类回归树框架和神经网络算法在死亡率数据处理中的应用。讨论了文献结果,重点讨论了机器学习技术对经典模型的预测性能。最后,对机器学习在长寿管理中的巨大潜力及其不足进行了反思。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Longevity risk management through Machine Learning: state of the art
Longevity risk management is an area of the life insurance business where the use of Artificial Intelligence is still underdeveloped. The paper retraces the main results of the recent actuarial literature on the topic to draw attention to the potential of Machine Learning in predicting mortality and consequently improving the longevity risk quantification and management, with practical implication on the pricing of life products with long-term duration and lifelong guaranteed options embedded in pension contracts or health insurance products. The application of AI methodologies to mortality forecasts improves both fitting and forecasting of the models traditionally used. In particular, the paper presents the Classification and the Regression Tree framework and the Neural Network algorithm applied to mortality data. The literature results are discussed, focusing on the forecasting performance of the Machine Learning techniques concerning the classical model. Finally, a reflection on both the great potentials of using Machine Learning in longevity management and its drawbacks is offered.
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来源期刊
Insurance Markets and Companies
Insurance Markets and Companies Economics, Econometrics and Finance-Finance
CiteScore
3.50
自引率
0.00%
发文量
6
审稿时长
11 weeks
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