Performance evaluation of the multi-dimensional Bühlmann credibility approach in predicting multi-population mortality rates

D. N. Parinding, S. Nurrohmah, M. Novita
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Abstract

Mortality prediction is a crucial aspect for insurance and pension fund companies in deciding a suitable premium. The aim of this research is to discuss a cross-country (multi-population) mortality modeling in order to obtain a better mortality prediction. This modeling is based on the multi-dimensional Buhlmann credibility approach. The expansion in this research refers to mortality rate data taken from several countries. The Buhlmann credibility theory is generally used to predict the value of a random variable in a given period in the future. In this research, prediction for years to come was done using two strategies: Expanding Window and Moving Window. For every prediction in the upcoming period, both Expanding Window and Moving Window use prediction result values as additional data to build upon the prediction model for the next year; however, Moving Window also dismisses the oldest data. The model parameter is estimated with non-parametric approach. This model is then applied to the mortality data from Japan, Sweden, and the Czech Republic. Finally, each model’s performance is analyzed using Mean Absolute Percentage Error (MAPE) and Average Mean Absolute Percentage Error (AMAPE). The result shows that the performance of the multi-dimensional Buhlmann credibility approach is satisfactory in modeling cross-country mortality rates.
多维 hlmann可信度方法在预测多人群死亡率中的性能评价
死亡率预测是保险公司和养老基金公司确定合适保费的一个重要方面。本研究的目的是讨论一个跨国家(多人口)的死亡率模型,以获得更好的死亡率预测。该模型基于多维Buhlmann可信度方法。本研究的扩展涉及来自几个国家的死亡率数据。Buhlmann可信度理论通常用于预测一个随机变量在未来某一特定时期的值。在这项研究中,对未来几年的预测使用了两种策略:扩展窗口和移动窗口。对于每一个即将到来的时期的预测,扩展窗口和移动窗口都将预测结果值作为附加数据来构建下一年的预测模型;然而,移动窗口也忽略了最古老的数据。采用非参数方法估计模型参数。然后将该模型应用于日本、瑞典和捷克共和国的死亡率数据。最后,使用平均绝对百分比误差(MAPE)和平均平均绝对百分比误差(AMAPE)对每个模型的性能进行分析。结果表明,多维Buhlmann可信度方法在模拟越野死亡率方面的性能令人满意。
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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