Shang Han Lin, Haberman Steven
1Research School of Finance, Actuarial Studies and Statistics, Australian National University, Level 4, Building 26C, Kingsley Street, Acton Canberra, ACT 2601 Australia.
2Cass Business School, City, University of London, London, UK.
Genus. 2018;74(1):19. doi: 10.1186/s41118-018-0043-9. Epub 2018 Nov 21.
Model averaging combines forecasts obtained from a range of models, and it often produces more accurate forecasts than a forecast from a single model.
The crucial part of forecast accuracy improvement in using the model averaging lies in the determination of optimal weights from a finite sample. If the weights are selected sub-optimally, this can affect the accuracy of the model-averaged forecasts. Instead of choosing the optimal weights, we consider trimming a set of models before equally averaging forecasts from the selected superior models. Motivated by Hansen et al. (Econometrica 79(2):453-497, 2011), we apply and evaluate the model confidence set procedure when combining mortality forecasts.
The proposed model averaging procedure is motivated by Samuels and Sekkel (International Journal of Forecasting 33(1):48-60, 2017) based on the concept of model confidence sets as proposed by Hansen et al. (Econometrica 79(2):453-497, 2011) that incorporates the statistical significance of the forecasting performance. As the model confidence level increases, the set of superior models generally decreases. The proposed model averaging procedure is demonstrated via national and sub-national Japanese mortality for retirement ages between 60 and 100+.
Illustrated by national and sub-national Japanese mortality for ages between 60 and 100+, the proposed model-averaged procedure gives the smallest interval forecast errors, especially for males.
We find that robust out-of-sample point and interval forecasts may be obtained from the trimming method. By robust, we mean robustness against model misspecification.
模型平均法结合了从一系列模型获得的预测结果,通常能产生比单一模型预测更准确的预测。
使用模型平均法提高预测准确性的关键在于从有限样本中确定最优权重。如果权重选择次优,这可能会影响模型平均预测的准确性。我们不选择最优权重,而是在对所选的优质模型的预测进行均等平均之前,考虑对一组模型进行修剪。受汉森等人(《计量经济学》79(2):453 - 497, 2011)的启发,我们在结合死亡率预测时应用并评估模型置信集程序。
所提出的模型平均程序是受塞缪尔斯和塞克尔(《国际预测杂志》33(1):48 - 60, 2017)的启发,基于汉森等人(《计量经济学》79(2):453 - 497, 2011)提出的模型置信集概念,该概念纳入了预测性能的统计显著性。随着模型置信水平提高,优质模型集通常会减少。所提出的模型平均程序通过日本全国和地方60岁至100岁以上退休年龄的死亡率进行了演示。
以日本全国和地方60岁至100岁以上年龄的死亡率为例,所提出的模型平均程序给出了最小的区间预测误差,尤其是对男性而言。
我们发现通过修剪方法可以获得稳健的样本外点预测和区间预测。这里所说的稳健是指对模型误设具有稳健性。