Uncertainty in Mortality Forecasting

Abstract
Traditionally, actuaries have modeled mortality improvement using deterministic reduction factors, with little consideration of the associated uncertainty. As mortality improvement has become an increasingly significant source of financial risk, it has become important to measure the uncertainty in the forecasts. Probabilistic confidence intervals provided by the widely accepted Lee-Carter model are known to be excessively narrow, due primarily to the rigid structure of the model. In this paper, we relax the model structure by considering individual differences (heterogeneity) in each age-period cell. The proposed extension not only provides a better goodness-of-fit based on standard model selection criteria, but also ensures more conservative interval forecasts of central death rates and hence can better reflect the uncertainty entailed. We illustrate the results using US and Canadian mortality data.

Keywords: Confidence interval, heterogeneity, Lee-Carter, maximum likelihood estimation, parametric bootstrap.

Volume
Vol. 39, No. 1
Page
137-164
Year
2009
Categories
Financial and Statistical Methods
Statistical Models and Methods
Boot-Strapping and Resampling Methods
Actuarial Applications and Methodologies
Reserving
Management Best Estimate
Publications
ASTIN Bulletin
Authors
Mary R Hardy
Ken Seng Tan