In this paper we investigate the flexibility of matrix distributions for the modeling of mortality. Starting from a simple Gompertz law, we show how the introduction of matrix-valued parameters via inhomogeneous phase-type distributions can lead to reasonably accurate and relatively parsimonious models for mortality curves across the entire lifespan. A particular feature of the proposed model framework is that it allows for a more direct interpretation of the implied underlying aging process than some previous approaches. Subsequently, towards applications of the approach for multi-population mortality modeling, we introduce regression via the concept of proportional intensities, which are more flexible than proportional hazard models, and we show that the two classes are asymptotically equivalent. We illustrate how the model parameters can be estimated from data by providing an adapted EM algorithm for which the likelihood increases at each iteration. The practical feasibility and competitiveness of the proposed approach are illustrated for several sets of mortality data.
翻译:我们从简单的Gompertz法律开始,说明通过不相容的相位分布采用矩阵估价参数如何导致整个寿命期间死亡率曲线的比较准确和相对相似的模式。拟议模型框架的一个特点,是它能够比以前一些方法更直接地解释隐含的老龄化过程。随后,在应用多人口死亡率模型方法方面,我们通过比例密度概念引入回归,这种概念比成比例危害模型更灵活,我们显示,这两个类别是同量的。我们通过提供经调整的EM算法,说明模型参数如何从数据中估算出来,而每个代数的可能性会增加。为几组死亡率数据展示了拟议方法的实际可行性和竞争力。