Predicting the evolution of mortality rates plays a central role for life insurance and pension funds.Various stochastic frameworks have been developed to model mortality patterns taking into account the main stylized facts driving these patterns. However, relying on the prediction of one specific model can be too restrictive and lead to some well documented drawbacks including model misspecification, parameter uncertainty and overfitting. To address these issues we first consider mortality modelling in a Bayesian Negative-Binomial framework to account for overdispersion and the uncertainty about the parameter estimates in a natural and coherent way. Model averaging techniques are then considered as a response to model misspecifications. In this paper, we propose two methods based on leave-future-out validation which are compared to the standard Bayesian model averaging (BMA) based on marginal likelihood. An intensive numerical study is carried out over a large range of simulation setups to compare the performances of the proposed methodologies. An illustration is then proposed on real-life mortality datasets which includes a sensitivity analysis to a Covid-type scenario. Overall, we found that both methods based on out-of-sample criterion outperform the standard BMA approach in terms of prediction performance and robustness.
翻译:预测死亡率的演变是人寿保险和养恤基金的中心作用。已经制定了各种分析框架,以模拟死亡率模式,同时考虑到驱动这些模式的主要典型事实。但是,依靠对一个具体模型的预测可能过于限制性,并会导致一些有详细记载的缺陷,包括模型区分不当、参数不确定性和过大。为了解决这些问题,我们首先考虑在巴伊西亚阴性二元框架中进行死亡率建模,以便以自然和连贯的方式计算过度分散和参数估计的不确定性。然后,将模型平均法视为对模型误差的一种反应。在本文件中,我们提出两种基于休假-未来验证的方法,这些方法与标准的巴伊斯模式平均值相比,以微不足道的可能性为根据。一项密集的数字研究是在一系列模拟模型上进行的,以比较拟议方法的性能。然后提出了关于实际死亡率数据集的说明,其中包括对Covid型假设的敏感性分析。总体而言,我们发现两种方法都是基于超前预测方法,以稳健的预测值标准为基准。