How Sensitive are VAR Forecasts to Prior Hyperparameters? An Automated Sensitivity Analysis

J. Chan, Liana Jacobi, Dan Zhu
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引用次数: 5

Abstract

Vector autoregressions (VAR) combined with Minnesota-type priors are widely used for macroeconomic forecasting. The fact that strong but sensible priors can substantially improve forecast performance implies VAR forecasts are sensitive to prior hyperparameters. But the nature of this sensitivity is seldom investigated. We develop a general method based on Automatic Differentiation to systematically compute the sensitivities of forecasts – both points and intervals – with respect to any prior hyperparameters. In a forecasting exercise using US data, we find that forecasts are relatively sensitive to the strength of shrinkage for the VAR coefficients, but they are not much affected by the prior mean of the error covariance matrix or the strength of shrinkage for the intercepts.
VAR预测对先验超参数有多敏感?自动灵敏度分析
向量自回归(VAR)结合明尼苏达型先验被广泛用于宏观经济预测。强而合理的先验可以显著提高预测性能,这意味着VAR预测对先验超参数很敏感。但是这种敏感性的本质很少被研究。我们开发了一种基于自动微分的一般方法来系统地计算预测的敏感性-包括点和区间-相对于任何先验超参数。在使用美国数据的预测练习中,我们发现预测对VAR系数的收缩强度相对敏感,但它们不太受误差协方差矩阵的先验均值或截距的收缩强度的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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