Comparison of Models for Growth-at-Risk Forecasting

Aleksei Kipriyanov
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引用次数: 1

Abstract

During the past several decades, the importance of assessing the risk of GDP growth downturns has increased tremendously. The financial crisis of 2008–2009 and the global lockdown caused by the COVID-19 pandemic demonstrated the vulnerability of the modern economy. As a result, a new framework (Growth-at-Risk) has been developed which allows the estimation of the size of the potential downfall of future GDP growth. However, most of the research focuses on the performance of quantile regression. I apply different approaches to forecasting growth-at-risk, including quantile regression, quantile random forests, and generalised autoregressive conditional heteroscedastic (GARCH) models, using the US economy for the analysis. I find that GARCH-type models perform worse at 5% and 10% coverage levels, but that quantile random forests and quantile regressions seem to have equal predictive ability.
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风险增长预测模型的比较
在过去的几十年里,评估GDP增长下滑风险的重要性大大增加。2008-2009年的金融危机和新冠肺炎大流行导致的全球封锁表明了现代经济的脆弱性。因此,一个新的框架(风险增长)已经被开发出来,它允许估计未来GDP增长的潜在下降幅度。然而,大多数研究都集中在分位数回归的性能上。我采用不同的方法来预测风险增长,包括分位数回归、分位数随机森林和广义自回归条件异方差(GARCH)模型,并使用美国经济进行分析。我发现garch类型的模型在5%和10%的覆盖率水平上表现较差,但分位数随机森林和分位数回归似乎具有相同的预测能力。
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