Macroeconomic Content of Characteristics-Based Asset Pricing Models: A Machine Learning Analysis

O. Rytchkov, Xun Zhong
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Abstract

We consider five characteristics-based asset pricing models and study whether the non-market components of their stochastic discount factors (SDFs) are associated with macroeconomic shocks. Our analysis involves a comprehensive set of 127 macroeconomic variables and uses machine learning techniques to mitigate the overfitting problem caused by a large number of explanatory variables. We find that macroeconomic shocks are totally unrelated to the non-market components of the SDFs. This conclusion extends to several theory-motivated macroeconomic factors. Thus, our results suggest that the empirical success of characteristics-based asset pricing models is produced by their ability to identify behavioral factors in stock returns.
基于特征的资产定价模型的宏观经济内容:机器学习分析
我们考虑了五种基于特征的资产定价模型,并研究了其随机贴现因子(sdf)的非市场成分是否与宏观经济冲击相关。我们的分析涉及127个宏观经济变量的综合集,并使用机器学习技术来缓解由大量解释变量引起的过拟合问题。我们发现宏观经济冲击与sdf的非市场成分完全无关。这一结论延伸到几个理论驱动的宏观经济因素。因此,我们的研究结果表明,基于特征的资产定价模型的经验成功是由它们识别股票收益中的行为因素的能力产生的。
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