There have been significant efforts devoted to solving the longevity risk given that a continuous growth in population ageing has become a severe issue for many developed countries over the past few decades. The Cairns-Blake-Dowd (CBD) model, which incorporates cohort effects parameters in its parsimonious design, is one of the most well-known approaches for mortality modelling at higher ages and longevity risk. This article proposes a novel mixed-effects time-series approach for mortality modelling and forecasting with considerations of age groups dependence and random cohort effects parameters. The proposed model can disclose more mortality data information and provide a natural quantification of the model parameters uncertainties with no pre-specified constraint required for estimating the cohort effects parameters. The abilities of the proposed approach are demonstrated through two applications with empirical male and female mortality data. The proposed approach shows remarkable improvements in terms of forecast accuracy compared to the CBD model in the short-, mid-and long-term forecasting using mortality data of several developed countries in the numerical examples.
翻译:在过去几十年中,人口老化的持续增长已成为许多发达国家的一个严重问题,因此为解决长寿风险作出了重大努力;Cairns-Blake-Dowd(CBD)模型将组群效应参数纳入其荒诞的设计,这是在高龄和长寿风险死亡率建模方面最广为人知的方法之一;本条提议对死亡率建模和预测采用新的混合时间序列方法,同时考虑到年龄组依赖性和随机组群效应参数;拟议的模型可以披露更多的死亡率数据信息,并提供关于模型参数不确定性的自然量化,而没有为估计组群效应参数预设的限制;拟议方法的能力通过两种应用,用男女死亡率经验数据加以证明;拟议方法表明,在短期、中期和长期预测方面,预测的准确性比利用数字实例中几个发达国家的死亡率数据进行的《生物多样性公约》模型有显著改善。