This paper focuses on modelling surrender time for policyholders in the context of life insurance. In this setup, a large lapse rate at the first months of a contract is often observed, with a decrease in this rate after some months. The modelling of the time to cancellation must account for this specific behaviour. Another stylised fact is that policies which are not cancelled in the study period are considered censored. To account for both censuring and heterogeneous lapse rates, this work assumes a Bayesian survival model with a mixture of regressions. The inference is based on data augmentation allowing for fast computations even for data sets of over a million clients. Moreover, scalable point estimation based on EM algorithm is also presented. An illustrative example emulates a typical behaviour for life insurance contracts and a simulated study investigates the properties of the proposed model. In particular, the observed censuring in the insurance context might be up to 50% of the data, which is very unusual for survival models in other fields such as epidemiology. This aspect is exploited in our simulated study.
翻译:本文的重点是在人寿保险方面对投保人进行模范性交接时间。在这一设置中,常常观察到合同头几个月的大量失效率,在几个月后这一比率下降。模拟注销时间必须说明这一具体行为。另一个典型事实是,在研究期内没有取消的政策被视为受审查的。考虑到保险和各种差错率,这项工作假设贝叶斯生存模式与回归混合。推断基于数据增强,允许快速计算超过100万客户的数据集。此外,还介绍了基于EM算法的可缩放点估算。一个实例,模仿人寿保险合同的典型行为和模拟研究调查拟议模型的特性。特别是,在保险方面观察到的警告可能高达数据的50%,这对流行病学等其他领域的生存模型来说是非常罕见的。我们模拟研究利用了这一方面。