Human mortality patterns and trajectories in closely related populations are likely linked together and share similarities. It is always desirable to model them simultaneously while taking their heterogeneity into account. This paper introduces two new models for joint mortality modelling and forecasting multiple subpopulations in adaptations of the multivariate functional principal component analysis techniques. The first model extends the independent functional data model to a multi-population modelling setting. In the second one, we propose a novel multivariate functional principal component method for coherent modelling. Its design primarily fulfils the idea that when several subpopulation groups have similar socio-economic conditions or common biological characteristics, such close connections are expected to evolve in a non-diverging fashion. We demonstrate the proposed methods by using sex-specific mortality data. Their forecast performances are further compared with several existing models, including the independent functional data model and the Product-Ratio model, through comparisons with mortality data of ten developed countries. Our experiment results show that the first proposed model maintains a comparable forecast ability with the existing methods. In contrast, the second proposed model outperforms the first model as well as the current models in terms of forecast accuracy, in addition to several desirable properties.
翻译:在第二个模型中,我们建议采用新的多功能数据模型和多功能数据模型,以建立一致的模型,其设计主要符合以下设想:当一些亚人口群体具有类似的社会经济条件或共同的生物特征时,这种密切的联系可望以非分散的方式演变;我们通过使用性别特定死亡率数据来展示拟议的方法;其预测绩效与若干现有模型进一步比较,包括与独立功能数据模型和产品-拉蒂奥模型进行比较,包括与十个发达国家的死亡率数据进行比较;我们的实验结果表明,第一个拟议模型保持了与现有方法可比的预测能力。相比之下,第二个拟议模型在预测准确性方面超越了第一个模型以及当前模型。