Should One Follow Movements in the Oil Price or in Money Supply? Forecasting Quarterly GDP Growth in Russia with Higher-Frequency Indicators

H. Mikosch, L. Solanko
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引用次数: 2

Abstract

GDP forecasters face tough choices over which leading indicators to follow and which forecasting models to use. To help resolve these issues, we examine a range of monthly indicators to forecast quarterly GDP growth in a major emerging economy, Russia. Numerous useful indicators are identified and forecast pooling of three model classes (bridge models, MIDAS models and unrestricted mixed-frequency models) are shown to outperform simple benchmark models. We further separately examine forecast accuracy of each of the three model classes. Our results show that differences in performance of model classes are generally small, but for the period covering the Great Recession unrestricted mixed-frequency models and MIDAS models clearly outperform bridge models. Notably, the sets of top-performing indicators differ for our two subsample observation periods (2008Q1–2011Q4 and 2012Q1–2016Q4). The best indicators in the first period are traditional real-sector variables, while those in the second period consist largely of monetary, banking sector and financial market variables. This finding supports the notion that highly volatile periods of recession and subsequent recovery are driven by forces other than those that prevail in more normal times. The results further suggest that the driving forces of the Russian economy have changed since the global financial crisis.
应该跟随油价走势还是货币供给走势?用高频指标预测俄罗斯季度GDP增长
国内生产总值预测者面临着艰难的选择:遵循哪些领先指标,使用哪些预测模型。为了帮助解决这些问题,我们研究了一系列月度指标,以预测主要新兴经济体俄罗斯的季度GDP增长。确定了许多有用的指标,并显示了三种模型类(桥模型、MIDAS模型和无限制混合频率模型)的预测池化优于简单的基准模型。我们进一步分别检验了三种模型的预测精度。我们的结果表明,模型类别的性能差异通常很小,但在涵盖大衰退的时期,无限制混合频率模型和MIDAS模型明显优于桥模型。值得注意的是,在我们的两个子样本观察期(2008q1 - 2011Q4和2012q1 - 2016Q4),表现最好的指标有所不同。第一个时期的最佳指标是传统的实体部门变量,而第二个时期的指标主要由货币、银行部门和金融市场变量组成。这一发现支持了一种观点,即高度波动的衰退期和随后的复苏是由一些力量驱动的,而不是那些在更正常时期盛行的力量。结果进一步表明,自全球金融危机以来,俄罗斯经济的驱动力发生了变化。
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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