MORTALITY AND LIFE EXPECTANCY FORECASTING FOR A GROUP OF POPULATIONS IN DEVELOPED COUNTRIES: A MULTILEVEL FUNCTIONAL DATA METHOD
成果类型:
Article
署名作者:
Shang, Han Lin
署名单位:
Australian National University
刊物名称:
ANNALS OF APPLIED STATISTICS
ISSN/ISSBN:
1932-6157
DOI:
10.1214/16-AOAS953
发表日期:
2016
页码:
1639-1672
关键词:
lee-carter method
probabilistic projections
time-series
MODEL
rates
prediction
摘要:
A multilevel functional data method is adapted for forecasting age-specific mortality for two or more populations in developed countries with high-quality vital registration systems. It uses multilevel functional principal component analysis of aggregate and population-specific data to extract the common trend and population-specific residual trend among populations. If the forecasts of population-specific residual trends do not show a long-term trend, then convergence in forecasts may be achieved. This method is first applied to age-and sex-specific data for the United Kingdom, and its forecast accuracy is then further compared with several existing methods, including independent functional data and product-ratio methods, through a multi-country comparison. The proposed method is also demonstrated by age-, sex-and state-specific data in Australia, where the convergence in forecasts can possibly be achieved by sex and state. For forecasting age-specific mortality, the multilevel functional data method is more accurate than the other coherent methods considered. For forecasting female life expectancy at birth, the multilevel functional data method is outperformed by the Bayesian method of Raftery, Lalic and Gerland [Demogr. Res. 30 (2014) 795-822]. For forecasting male life expectancy at birth, the multilevel functional data method performs better than the Bayesian methods in terms of point forecasts, but less well in terms of interval forecasts. Supplementary materials for this article are available online.
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