Grouped multivariate and functional time series forecasting: an application to annuity pricing
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Shang, Hanlin
Haberman, Steven
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Elsevier
Abstract
Age-specific mortality rates are often disaggregated by different attributes, such as sex, state, ethnic
group and socioeconomic status. In making social policies and pricing annuity at national and subnational
levels, it is important not only to forecast mortality accurately, but also to ensure that forecasts at the
subnational level add up to the forecasts at the national level. This motivates recent developments in
grouped functional time series methods (Shang and Hyndman, in press) to reconcile age-specific mortality
forecasts. We extend these grouped functional time series forecasting methods to multivariate time
series, and apply them to produce point forecasts of mortality rates at older ages, from which fixed-term
annuities for different ages and maturities can be priced. Using the regional age-specific mortality rates
in Japan obtained from the Japanese Mortality Database, we investigate the one-step-ahead to 15-stepahead
point-forecast accuracy between the independent and grouped forecasting methods. The grouped
forecasting methods are shown not only to be useful for reconciling forecasts of age-specific mortality
rates at national and subnational levels, but they are also shown to allow improved forecast accuracy. The
improved forecast accuracy of mortality rates is of great interest to the insurance and pension industries
for estimating annuity prices, in particular at the level of population subgroups, defined by key factors
such as sex, region, and socioeconomic grouping.
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Insurance; Mathematics and Economics