通过自动去偏机器学习识别因子

Identifying factors via automatic debiased machine learning

Journal of Applied Econometrics · 2024
被引 10
人大 AABS 3

中文导读

采用自动去偏机器学习方法,在非线性随机贴现因子假设下稳健估计因子的定价效应,识别出30-50个对美国股票收益有显著解释力的因子,优于传统方法。

Abstract

Summary Identifying risk factors that have significant explanatory power for the cross‐sectional asset returns is fundamental in asset pricing. We adopt a novel automatic debiased machine learning (ADML) method proposed by Chernozhukov, Newey, and Singh (2022) to robustly estimate partial pricing effect of a certain factor controlling for a large number of confounding factors under a nonlinear stochastic discount factor (SDF) assumption. The ADML resolves biased estimation, non‐robustness, and overfitting issues that are common to traditional machine learning approaches. We find that the most significant factors selected by the ADML outperform the Fama–French sparse factors and factors identified via the double‐selection LASSO method under a linear factor model assumption. Out of a high‐dimensional zoo of US stock market factors commonly tested in the finance literature, we identify approximately 30 to 50 factors having significant but declining pricing power in explaining the cross‐section of stock returns. Our findings are robust to hyperparameter settings and choices of test assets and machine learning methods.

自动去偏机器学习因子识别资产定价随机贴现因子