Projecting UK Mortality using Bayesian Generalised Additive Models
Jason Hilton, Erengul Dodd, Jonathan J. Forster, Peter W. F. Smith

TL;DR
This paper introduces a Bayesian method combining GAM and parametric models to improve mortality forecasts in the UK, especially at advanced ages, accounting for uncertainty and correlations between sexes.
Contribution
It presents a novel Bayesian framework that jointly models mortality across ages and sexes, incorporating smooth and parametric components for better long-term predictions.
Findings
Accurately forecasts mortality at ages 90+ using Bayesian GAM and parametric models.
Joint modeling captures correlations between male and female mortality trends.
Model outperforms traditional methods in predictive accuracy for UK mortality data.
Abstract
Forecasts of mortality provide vital information about future populations, with implications for pension and health-care policy as well as for decisions made by private companies about life insurance and annuity pricing. Stochastic mortality forecasts allow the uncertainty in mortality predictions to be taken into consideration when making policy decisions and setting product prices. Longer lifespans imply that forecasts of mortality at ages 90 and above will become more important in such calculations. This paper presents a Bayesian approach to the forecasting of mortality that jointly estimates a Generalised Additive Model (GAM) for mortality for the majority of the age-range and a parametric model for older ages where the data are sparser. The GAM allows smooth components to be estimated for age, cohort and age-specific improvement rates, together with a non-smoothed period effect.…
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