Departments of Statistics and Sociology, University of Washington, Seattle, WA, USA.
Demography. 2013 Jun;50(3):777-801. doi: 10.1007/s13524-012-0193-x.
We propose a Bayesian hierarchical model for producing probabilistic forecasts of male period life expectancy at birth for all the countries of the world to 2100. Such forecasts would be an input to the production of probabilistic population projections for all countries, which is currently being considered by the United Nations. To evaluate the method, we conducted an out-of-sample cross-validation experiment, fitting the model to the data from 1950-1995 and using the estimated model to forecast for the subsequent 10 years. The 10-year predictions had a mean absolute error of about 1 year, about 40 % less than the current UN methodology. The probabilistic forecasts were calibrated in the sense that, for example, the 80 % prediction intervals contained the truth about 80 % of the time. We illustrate our method with results from Madagascar (a typical country with steadily improving life expectancy), Latvia (a country that has had a mortality crisis), and Japan (a leading country). We also show aggregated results for South Asia, a region with eight countries. Free, publicly available R software packages called bayesLife and bayesDem are available to implement the method.
我们提出了一个贝叶斯层次模型,用于生成全球所有国家男性出生时预期寿命的概率预测,预测时间可至 2100 年。此类预测将成为所有国家进行概率人口预测的输入,目前联合国正在考虑这一问题。为了评估该方法,我们进行了一个样本外交叉验证实验,将模型拟合到 1950-1995 年的数据中,并使用估计的模型对随后的 10 年进行预测。10 年的预测平均绝对误差约为 1 年,比当前的联合国方法低约 40%。概率预测在某种意义上是校准的,例如,80%的预测区间大约有 80%的时间包含真实值。我们用马达加斯加(一个预期寿命稳步提高的典型国家)、拉脱维亚(一个经历过死亡率危机的国家)和日本(一个领先的国家)的结果来说明我们的方法。我们还展示了南亚(一个有八个国家的地区)的汇总结果。可免费获取公开的 R 软件包 bayesLife 和 bayesDem,用于实现该方法。