贝叶斯var:规格选择和预测准确性

Andrea Carriero, Todd E. Clark, Massimiliano Marcellino
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引用次数: 238

摘要

在本文中,我们研究了贝叶斯var的预测性能如何受到一些规格选择的影响。在基线情况下,我们使用了一个正态倒转的Wishart先验,当与(伪)迭代方法相结合时,使多步预测的分析计算变得可行和简单,特别是当使用标准和固定的紧度值和滞后长度时。然后,我们评估了最优选择的紧度,滞后长度和两者的作用;比较多步骤预测的替代方法(直接、迭代和伪迭代);讨论了误差方差和交叉变量收缩的处理;并解决一系列附加问题,包括VAR的大小,模型的水平或增长率,以及由收缩引起的预测偏差的程度。我们获得了大量的经验结果,但是我们可以总结说,通过采用规范选择使BVAR建模快速和容易,我们发现了非常小的损失(有时甚至是收益)。因此,这一发现可以进一步加强BVAR作为广泛应用的计量经济工具的传播。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian VARs: Specification Choices and Forecast Accuracy
In this paper we examine how the forecasting performance of Bayesian VARs is affected by a number of specification choices. In the baseline case, we use a Normal-Inverted Wishart prior that, when combined with a (pseudo-) iterated approach, makes the analytical computation of multi-step forecasts feasible and simple, in particular when using standard and fixed values for the tightness and the lag length. We then assess the role of the optimal choice of the tightness, of the lag length and of both; compare alternative approaches to multi-step forecasting (direct, iterated, and pseudo-iterated); discuss the treatment of the error variance and of cross-variable shrinkage; and address a set of additional issues, including the size of the VAR, modeling in levels or growth rates, and the extent of forecast bias induced by shrinkage. We obtain a large set of empirical results, but we can summarize them by saying that we find very small losses (and sometimes even gains) from the adoption of specification choices that make BVAR modeling quick and easy. This finding could therefore further enhance the diffusion of the BVAR as an econometric tool for a vast range of applications.
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