Onorante Luca, Raftery Adrian E
Head of the Macro Modelling Project and Deputy Head of Research at the Central Bank of Ireland.
Professor of Statistics and Sociology at the University of Washington.
Eur Econ Rev. 2016 Jan 1;81:2-14. doi: 10.1016/j.euroecorev.2015.07.013.
Bayesian model averaging has become a widely used approach to accounting for uncertainty about the structural form of the model generating the data. When data arrive sequentially and the generating model can change over time, Dynamic Model Averaging (DMA) extends model averaging to deal with this situation. Often in macroeconomics, however, many candidate explanatory variables are available and the number of possible models becomes too large for DMA to be applied in its original form. We propose a new method for this situation which allows us to perform DMA without considering the whole model space, but using a subset of models and dynamically optimizing the choice of models at each point in time. This yields a dynamic form of Occam's window. We evaluate the method in the context of the problem of nowcasting GDP in the Euro area. We find that its forecasting performance compares well with that of other methods.
贝叶斯模型平均法已成为一种广泛使用的方法,用于处理生成数据的模型结构形式的不确定性。当数据按顺序到达且生成模型可能随时间变化时,动态模型平均法(DMA)将模型平均法扩展以处理这种情况。然而,在宏观经济学中,通常有许多候选解释变量,可能的模型数量变得太大,以至于DMA无法以其原始形式应用。针对这种情况,我们提出了一种新方法,该方法使我们能够在不考虑整个模型空间的情况下执行DMA,而是使用模型的一个子集,并在每个时间点动态优化模型的选择。这产生了奥卡姆窗口的动态形式。我们在欧元区国内生产总值实时预测问题的背景下评估了该方法。我们发现它的预测性能与其他方法相比表现良好。