Estimating and Accounting for the Output Gap with Large Bayesian Vector Autoregressions

J. Morley, Benjamin Wong
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引用次数: 39

Abstract

We demonstrate how Bayesian shrinkage can address problems with utilizing large information sets to calculate trend and cycle via a multivariate Beveridge-Nelson (BN) decomposition. We illustrate our approach by estimating the U.S. output gap with large Bayesian vector autoregressions that include up to 138 variables. Because the BN trend and cycle are linear functions of historical forecast errors, we are also able to account for the estimated output gap in terms of different sources of information, as well as particular underlying structural shocks given identification restrictions. Our empirical analysis suggests that, in addition to output growth, the unemployment rate, CPI inflation, and, to a lesser extent, housing starts, consumption, stock prices, real M1, and the federal funds rate are important conditioning variables for estimating the U.S. output gap, with estimates largely robust to incorporating additional variables. Using standard identification restrictions, we find that the role of monetary policy shocks in driving the output gap is small, while oil price shocks explain about 10% of the variance over different horizons.
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用大贝叶斯向量自回归估计和计算输出缺口
我们展示了贝叶斯收缩如何通过多元贝弗里奇-尼尔森(BN)分解利用大信息集来计算趋势和周期来解决问题。我们通过使用包括多达138个变量的大型贝叶斯向量自回归来估计美国的产出缺口来说明我们的方法。由于BN趋势和周期是历史预测误差的线性函数,我们还能够根据不同的信息来源,以及在识别限制下的特定潜在结构性冲击,来解释估计的产出缺口。我们的实证分析表明,除了产出增长,失业率、CPI通胀,以及在较小程度上,住房开工、消费、股票价格、实际M1和联邦基金利率是估计美国产出缺口的重要条件变量,其估计在很大程度上对纳入其他变量是稳健的。使用标准识别限制,我们发现货币政策冲击在推动产出缺口方面的作用很小,而油价冲击在不同范围内解释了约10%的方差。
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