Evidence for Persistence and Long Memory Features in Mortality Data

Hongxuan Yan, G. Peters, J. Chan
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Abstract

It is important to understand the statistical features of mortality data if one is to accurately undertake mortality projection and forecasting when constructing life tables. The ability to accurately forecast mortality is a critical aspect for the study of demography, life insurance product design and pricing, pension planning and insurance based decision risk management. Though many stylised facts of mortality data have been discussed in the literature, we provide evidence for a novel statistical feature that is pervasive in mortality data at a national level that is as yet unexplored. In this regard we demonstrate in this work strong evidence for the existence of long memory features in mortality data. We argue that it is important to consider as incorporate of such features in models will improve the understanding of mortality and the accuracy of forecasts. To achieve this we first outline the way in which we choose to represent persistence of long memory from a estimator perspective. To achieve this, we make a natural link between a class of long memory feature and an attribute of stochastic processes based on fractional Brownian motion. This allows us to use well established estimators for the Hurst exponent to then robustly and accurately study the long memory features of mortality data. A series of synthetic studies are implemented to evaluate the performance of three different estimators under different data lengths, different long memory strengths, different missing value settings, different aggregation type and different quantization. All of which are common transformations used in studying national level mortality data. Then the dynamic of the long memory across genders, age groups, countries and time periods is further analysed using real data from a range of different countries to demonstrate overwhelming evidence for this statistical property of mortality data.
死亡率数据中持久性和长记忆特征的证据
在构建生命表时,要准确地进行死亡率推算和预测,了解死亡率数据的统计特征是很重要的。准确预测死亡率的能力是研究人口统计学、人寿保险产品设计和定价、养老金规划和基于保险的决策风险管理的关键方面。虽然在文献中讨论了许多程式化的死亡率数据事实,但我们提供了一个新的统计特征的证据,该特征在国家一级的死亡率数据中普遍存在,但尚未被探索。在这方面,我们在这项工作中证明了死亡率数据中存在长记忆特征的有力证据。我们认为,考虑将这些特征纳入模型将提高对死亡率的理解和预测的准确性,这一点很重要。为了实现这一点,我们首先概述了从估计器的角度选择表示长记忆持久性的方法。为了实现这一点,我们在一类长记忆特征和基于分数布朗运动的随机过程属性之间建立了自然的联系。这使我们能够使用完善的赫斯特指数估计,然后稳健和准确地研究死亡率数据的长记忆特征。对三种不同估计器在不同数据长度、不同长记忆强度、不同缺失值设置、不同聚合类型和不同量化下的性能进行了一系列综合研究。所有这些都是研究国家一级死亡率数据时常用的转换方法。然后,使用来自不同国家的真实数据进一步分析了跨性别、年龄组、国家和时间段的长记忆动态,以证明死亡率数据的这一统计属性的压倒性证据。
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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