先验在有符号约束VAR模型估计中的作用

A. Inoue, L. Kilian
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引用次数: 24

摘要

最近的一些研究表明,在估计符号识别VAR模型时通常施加的哈尔先验可能无意中提供了关于结构脉冲响应的隐含先验的信息。这个问题确实很重要,但我们表明,文献中用来说明这个潜在问题的工具是无效的。具体来说,我们表明,从贝叶斯的角度来看,基于脉冲响应的分布来表征脉冲响应先验是没有意义的,这些脉冲响应的分布取决于约简形式参数的最大似然估计量,因为先验通常不依赖于数据。我们说明,这种方法往往产生高度误导的估计脉冲响应先验。我们正式推导了正确的脉冲响应先验分布,并表明没有证据表明使用传统先验估计的典型符号识别VAR模型倾向于无意地暗示脉冲响应向量的信息先验,或者相应的后验由先验主导。我们的证据表明,对旋转矩阵的Haar先验的关注被大大夸大了,并且在典型应用中不需要替代的估计方法。最后,我们证明了Baumeister和Hamilton(2015)提出的用于估计符号识别VAR模型的替代贝叶斯方法与传统方法存在完全相同的概念缺陷。我们说明,这种替代方法可能意味着高度经济上不合理的脉冲响应先验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Role of the Prior in Estimating VAR Models with Sign Restrictions
Several recent studies have expressed concern that the Haar prior typically imposed in estimating sign-identified VAR models may be unintentionally informative about the implied prior for the structural impulse responses. This question is indeed important, but we show that the tools that have been used in the literature to illustrate this potential problem are invalid. Specifically, we show that it does not make sense from a Bayesian point of view to characterize the impulse response prior based on the distribution of the impulse responses conditional on the maximum likelihood estimator of the reduced-form parameters, since the prior does not, in general, depend on the data. We illustrate that this approach tends to produce highly misleading estimates of the impulse response priors. We formally derive the correct impulse response prior distribution and show that there is no evidence that typical sign-identified VAR models estimated using conventional priors tend to imply unintentionally informative priors for the impulse response vector or that the corresponding posterior is dominated by the prior. Our evidence suggests that concerns about the Haar prior for the rotation matrix have been greatly overstated and that alternative estimation methods are not required in typical applications. Finally, we demonstrate that the alternative Bayesian approach to estimating sign-identified VAR models proposed by Baumeister and Hamilton (2015) suffers from exactly the same conceptual shortcoming as the conventional approach. We illustrate that this alternative approach may imply highly economically implausible impulse response priors.
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