Multi-factor, Age-Cohort, Affine Mortality Models: A Multi-Country Comparison

F. Ungolo, M. Sherris, Yuxin Zhou
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引用次数: 1

Abstract

Affine mortality models, developed in continuous time, are well suited to longevity applications including pricing and risk management. Advantages of this modelling approach include closed-form derivations of cohort survival curves, with these survival curves consistent with the dynamics of mortality rates. We compare a number of multi-factor continuous-time affine models applied to age-cohort mortality data in a multi-country comparison of five countries with differing lengths of time-series mortality data. We develop improved estimation methods for these models and provide R code. Parameters are estimated using maximum likelihood with the univariate Kalman Filter, which accounts for the Poisson variation in the measurement equation. We show how this estimation method is faster and more robust compared to the traditional formulation which heavily uses large matrix multiplication and inversion. We also discuss and address numerical issues with the estimation process. We provide graphical and numerical goodness-of-fit checks and assess model robustness. We then project cohort survival curves and assess the out-of-sample performance of the analysed models. Although the CIR mortality model fits historical data well, particularly at older ages. Other affine mortality models provide better out-of-sample performance, although less so old ages. We show that the affine mortality models analysed are robust with respect to the set of age-cohort data used for parameter estimation.
多因素,年龄队列,仿射死亡率模型:多国比较
在连续时间内开发的仿射死亡率模型非常适合于包括定价和风险管理在内的寿命应用。这种建模方法的优点包括群体生存曲线的封闭式推导,这些生存曲线与死亡率的动态一致。我们比较了多个多因素连续时间仿射模型应用于年龄队列死亡率数据的多国比较,其中五个国家具有不同长度的时间序列死亡率数据。我们为这些模型开发了改进的估计方法,并提供了R代码。参数估计使用最大似然与单变量卡尔曼滤波器,这说明了泊松变化的测量方程。我们展示了与大量使用大矩阵乘法和反演的传统公式相比,这种估计方法如何更快,更健壮。我们还讨论和处理估计过程中的数值问题。我们提供图形和数值拟合优度检查和评估模型稳健性。然后,我们绘制队列生存曲线,并评估分析模型的样本外性能。尽管CIR死亡率模型很符合历史数据,尤其是老年人的数据。其他仿射死亡率模型提供了更好的样本外性能,尽管年龄较低。我们表明,所分析的仿射死亡率模型对于用于参数估计的年龄队列数据集是稳健的。
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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