Forecasting US Equity and Bond Correlation—A Machine Learning Approach

Boyu Wu, Kevin J. DiCiurcio, Beatrice Yeo, Qian Wang
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Abstract

The stock–bond correlation is a cornerstone of every asset allocation decision, but estimating it reliably can prove to be challenging given the potential for co-movements to fluctuate significantly based on economic conditions. Using supervised machine learning techniques, this article presents a new approach for identifying key determinants of the correlation between US equity and bond returns, ultimately finding that inflation, alongside real yields, equity volatility, economic growth, and inflation uncertainty, predict changes in correlation dynamics overtime. Relative to the existing literature, the authors’ approach allows for the systematic detection of the main drivers of stock–bond correlation and uncovers the time variation in importance of each determinant across economic regimes. Upon conducting an out-of-sample portfolio evaluation, the authors show that the five factors with gradient boosting regression approach outperforms all other existing factor-based models in estimating both the trend and level of correlation, thereby offering an alternative robust solution for forecasting time-varying equity and bond co-movements that can be further applied to asset allocation decisions and risk management.
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预测美国股票和债券相关性——机器学习方法
股票-债券相关性是每项资产配置决策的基础,但考虑到协同走势可能会因经济状况而大幅波动,可靠地估计它可能具有挑战性。使用监督机器学习技术,本文提出了一种新的方法来识别美国股票和债券回报之间相关性的关键决定因素,最终发现通货膨胀与实际收益率、股票波动性、经济增长和通货膨胀不确定性一起预测相关性动态的变化。相对于现有文献,作者的方法允许系统地检测股票-债券相关性的主要驱动因素,并揭示了经济制度中每个决定因素重要性的时间变化。在进行样本外投资组合评估后,作者表明,梯度增强回归方法的五个因素在估计趋势和相关水平方面优于所有其他现有的基于因素的模型,从而为预测时变股票和债券的共同运动提供了另一种稳健的解决方案,可以进一步应用于资产配置决策和风险管理。
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