Stochastic population forecasts using functional data models for
mortality, fertility and migration
Hyndman, R.J.
, Booth, H.
Pages 323-342
AbstractAge-sex-specific population forecasts are derived through stochastic
population renewal using forecasts of mortality, fertility and net
migration. Functional data models with time series coefficients are used to
model age-specific mortality and fertility rates. As detailed migration
data are lacking, net migration by age and sex is estimated as the
difference between historic annual population data and successive
populations one year ahead derived from a projection using fertility and
mortality data. This estimate, which includes error, is also modeled using
a functional data model. The three models involve different strengths of
the general Box-Cox transformation chosen to minimise out-of-sample
forecast error. Uncertainty is estimated from the model, with an adjustment
to ensure that the one-step-forecast variances are equal to those obtained
with historical data. The three models are then used in a Monte Carlo
simulation of future fertility, mortality and net migration, which are
combined using the cohort-component method to obtain age-specific forecasts
of the population by sex. The distribution of the forecasts provides
probabilistic prediction intervals. The method is demonstrated by making
20-year forecasts using Australian data for the period 1921-2004. The
advantages of our method are: (1) it is a coherent stochastic model of the
three demographic components; (2) it is estimated entirely from historical
data with no subjective inputs required; and (3) it provides probabilistic
prediction intervals for any demographic variable that is derived from
population numbers and vital events, including life expectancies, total
fertility rates and dependency ratios.
Keywords: Fertility forecasting
, Functional data
, Mortality forecasting
, Net migration
, Nonparametric smoothing
, Population forecasting
, Principal components
, Simulation