Department of Statistics, University of Washington, Seattle, WA 98195-4322, USA.
Proc Natl Acad Sci U S A. 2012 Aug 28;109(35):13915-21. doi: 10.1073/pnas.1211452109. Epub 2012 Aug 20.
Projections of countries' future populations, broken down by age and sex, are widely used for planning and research. They are mostly done deterministically, but there is a widespread need for probabilistic projections. We propose a bayesian method for probabilistic population projections for all countries. The total fertility rate and female and male life expectancies at birth are projected probabilistically using bayesian hierarchical models estimated via Markov chain Monte Carlo using United Nations population data for all countries. These are then converted to age-specific rates and combined with a cohort component projection model. This yields probabilistic projections of any population quantity of interest. The method is illustrated for five countries of different demographic stages, continents and sizes. The method is validated by an out of sample experiment in which data from 1950-1990 are used for estimation, and applied to predict 1990-2010. The method appears reasonably accurate and well calibrated for this period. The results suggest that the current United Nations high and low variants greatly underestimate uncertainty about the number of oldest old from about 2050 and that they underestimate uncertainty for high fertility countries and overstate uncertainty for countries that have completed the demographic transition and whose fertility has started to recover towards replacement level, mostly in Europe. The results also indicate that the potential support ratio (persons aged 20-64 per person aged 65+) will almost certainly decline dramatically in most countries over the coming decades.
按年龄和性别细分的各国未来人口预测被广泛用于规划和研究。这些预测大多是确定性的,但人们普遍需要概率预测。我们提出了一种用于所有国家概率人口预测的贝叶斯方法。总生育率以及女性和男性的出生预期寿命是使用贝叶斯层次模型进行概率预测的,该模型通过马尔可夫链蒙特卡罗法使用联合国所有国家的人口数据进行估计。然后,这些数据被转换为特定年龄的比率,并与队列成分预测模型相结合。这可以得出任何感兴趣的人口数量的概率预测。该方法通过对五个不同人口阶段、大陆和规模的国家的示例进行说明。该方法通过在样本外进行验证,其中使用 1950 年至 1990 年的数据进行估计,并应用于预测 1990 年至 2010 年的数据。该方法在该时期内似乎具有相当的准确性和良好的校准。结果表明,目前联合国的高和低变体极大地低估了 2050 年左右最老年龄段人数的不确定性,并且它们低估了高生育率国家的不确定性,夸大了已经完成人口转型且生育率开始恢复到更替水平的国家的不确定性,主要是在欧洲。结果还表明,在未来几十年,大多数国家的潜在支持率(20 至 64 岁的人口与 65 岁以上的人口之比)几乎肯定会大幅下降。