论文标题
具有基质分布的死亡率建模和回归
Mortality modeling and regression with matrix distributions
论文作者
论文摘要
在本文中,我们研究了矩阵分布对死亡率建模的灵活性。从简单的gompertz定律开始,我们展示了如何通过不均匀的相型分布引入矩阵值的参数,这会导致整个寿命中的死亡率曲线的合理准确和相对相对的模型。所提出的模型框架的一个特定特征是,它允许比以前的方法更直接地解释隐含的基本老化过程。随后,为了应用多个人口死亡率建模方法的应用,我们通过比例强度的概念引入回归,这些概念比比例危害模型更灵活,我们表明这两个类别在渐近上等效。我们说明了如何通过提供适应的EM算法来从数据估算模型参数,在每种迭代时可能会增加可能性。拟议方法的实际可行性和竞争力(包括右审查案例)用几组死亡率和生存数据说明了。
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, including the right-censored case, are illustrated by several sets of mortality and survival data.