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APPLYING ECONOMIC MEASURES TO LAPSE RISK MANAGEMENT WITH MACHINE LEARNING APPROACHES

机译:用机器学习方法应用经济措施失效风险管理

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摘要

Modeling policyholders' lapse behaviors is important to a life insurer, since lapses affect pricing, reserving, profitability, liquidity, risk management, and the solvency of the insurer. In this paper, we apply two machine learning methods to lapse modeling. Then, we evaluate the performance of these two methods along with two popular statistical methods by means of statistical accuracy and profitability measure. Moreover, we adopt an innovative point of view on the lapse prediction problem that comes from churn management. We transform the classification problem into a regression question and then perform optimization, which is new to lapse risk management. We apply the aforementioned four methods to a large real-world insurance dataset. The results show that Extreme Gradient Boosting (XGBoost) and support vector machine outperform logistic regression (LR) and classification and regression tree with respect to statistic accuracy, while LR performs as well as XGBoost in terms of retention gains. This highlights the importance of a proper validation metric when comparing different methods. The optimization after the transformation brings out significant and consistent increases in economic gains. Therefore, the insurer should conduct optimization on its economic objective to achieve optimal lapse management.
机译:建模保单持有人的失效行为对生命保险公司来说很重要,因为失误会影响定价,保留,盈利,流动性,风险管理和保险公司的偿付能力。在本文中,我们将两种机器学习方法应用于推移建模。然后,我们通过统计准确度和盈利能力测量来评估这两种方法的性能以及两个流行的统计方法。此外,我们采用了对流失管理的失效预测问题的创新观点。我们将分类问题转换为回归问题,然后执行优化,这是流逝风险管理的新功能。我们将上述四种方法应用于大型真实保险数据集。结果表明,极端梯度升压(XGBoost)和支持向量机优于统计准确性的逻辑回归(LR)和分类和回归树,而LR在保留增益方面执行以及XGBoost。这突出了不同方法何时进行比较时正确验证度量的重要性。转化后的优化带来了经济收益的显着和一致的增加。因此,保险公司应对其经济目标进行优化,以实现最佳失效管理。

著录项

  • 来源
    《Astin bulletin》 |2021年第3期|839-871|共33页
  • 作者单位

    Univ Claude Bernard Lyon 1 Univ Lyon Inst Sci Financiere & Assurances ISFA Lab SAF EA2429 F-69366 Lyon France;

    Univ Claude Bernard Lyon 1 Univ Lyon Inst Sci Financiere & Assurances ISFA Lab SAF EA2429 F-69366 Lyon France|Seyna 58 Rue Victoire F-75009 Paris France;

    Natl Chengchi Univ NCCU Dept Risk Management & Insurance Risk Coll Commerce Taipei Taiwan|Natl Chengchi Univ NCCU Insurance Res Ctr Coll Commerce Taipei Taiwan;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Lapse; life insurance; machine learning; economic measure;

    机译:失误;人寿保险;机器学习;经济措施;

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