使用期限差预测衰退概率:来自机器学习方法的新证据

Jaehyuk Choi, Desheng Ge, K. Kang, S. Sohn
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引用次数: 0

摘要

利用收益率曲线预测衰退的文献通常将期限差衡量为10年期和3个月期美国国债利率之差。此外,使用期限价差约束了长期利率和短期利率对衰退概率具有相同的绝对影响。在本研究中,我们采用机器学习的方法来研究利率的预测能力是否可以提高。机器学习算法识别最佳期限对,将利率的影响与期限价差的影响分离开来。我们的综合经验练习表明,尽管有似然增益,但由于估计误差,机器学习方法并没有显著提高预测精度。我们的研究结果支持使用10年期和3个月期美国国债收益率差的传统方法。这对衰退观测的预测范围、控制变量、样本周期和过采样具有鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Recession Probabilities Using Term Spreads: New Evidence from a Machine Learning Approach
The literature on using yield curves to forecast recessions typically measures the term spread as the difference between the 10-year and the three-month Treasury rates. Furthermore, using the term spread constrains the long- and short-term interest rates to have the same absolute effect on the recession probability. In this study, we adopt a machine learning method to investigate whether the predictive ability of interest rates can be improved. The machine learning algorithm identifies the best maturity pair, separating the effects of interest rates from those of the term spread. Our comprehensive empirical exercise shows that, despite the likelihood gain, the machine learning approach does not significantly improve the predictive accuracy, owing to the estimation error. Our finding supports the conventional use of the 10-year--three-month Treasury yield spread. This is robust to the forecasting horizon, control variable, sample period, and oversampling of the recession observations.
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