This paper extends Bayesian mortality projection models for multiple populations considering the stochastic structure and the effect of spatial autocorrelation among the observations. We explain high levels of overdispersion according to adjacent locations based on the conditional autoregressive model. In an empirical study, we compare different hierarchical projection models for the analysis of geographical diversity in mortality between the Japanese counties in multiple years, according to age. By a Markov chain Monte Carlo (MCMC) computation, results have demonstrated the flexibility and predictive performance of our proposed model.
翻译:本文扩展了针对多种人口的贝叶斯死亡率预测模型,同时考虑到随机结构以及观测中空间自动关系的影响。我们根据有条件自动递减模型解释相邻地点的过度分散程度高。在一项经验研究中,我们根据年龄对日本各县多年死亡率地域多样性分析的不同等级预测模型进行了比较。通过Markov连锁公司Monte Carlo(MCMC)的计算,结果显示了我们拟议模型的灵活性和预测性能。