贝叶斯压缩向量自回归

G. Koop, Dimitris Korobilis, Davide Pettenuzzo
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引用次数: 70

摘要

宏观经济学家越来越多地使用大型向量自回归(var),其中参数的数量大大超过了观测值的数量。现有的方法要么涉及预先收缩,要么使用因子方法。在本文中,我们基于压缩回归文献的思想开发了一种替代方法。它涉及在分析之前随机压缩解释变量。这样,一个巨大的维度问题就变成了一个更小、更易于计算的问题。贝叶斯模型平均可以对各种压缩进行,对预测良好的压缩赋予更大的权重。在涉及多达129个变量的宏观经济应用中,我们发现压缩VAR方法的预测效果优于因子法或涉及先前收缩的大VAR方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian Compressed Vector Autoregressions
Macroeconomists are increasingly working with large Vector Autoregressions (VARs) where the number of parameters vastly exceeds the number of observations. Existing approaches either involve prior shrinkage or the use of factor methods. In this paper, we develop an alternative based on ideas from the compressed regression literature. It involves randomly compressing the explanatory variables prior to analysis. A huge dimensional problem is thus turned into a much smaller, more computationally tractable one. Bayesian model averaging can be done over various compressions, attaching greater weight to compressions which forecast well. In a macroeconomic application involving up to 129 variables, we find compressed VAR methods to forecast better than either factor methods or large VAR methods involving prior shrinkage.
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