资产定价中的归因方法:它们考虑风险了吗?

Dangxing Chen, Yuan Gao
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引用次数: 0

摘要

过去几十年来,机器学习模型取得了巨大成功。由于采用了公理归因方法,特征贡献得到了更清晰、更严格的解释。然而,很少有研究将领域知识与公理结合起来进行研究。在本研究中,我们考察了金融领域的资产定价,这是一个与风险管理密切相关的领域。因此,在应用机器学习模型时,我们必须确保归因方法能准确反映潜在风险。在这项工作中,我们提出并研究了从资产定价领域知识中得出的几条公理。研究表明,虽然夏普利值和综合梯度保留了大部分公理,但两者都不能满足所有公理。通过大量的分析和经验实例,我们证明了归因方法如何反映风险,以及何时不应使用这些方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attribution Methods in Asset Pricing: Do They Account for Risk?
Over the past few decades, machine learning models have been extremely successful. As a result of axiomatic attribution methods, feature contributions have been explained more clearly and rigorously. There are, however, few studies that have examined domain knowledge in conjunction with the axioms. In this study, we examine asset pricing in finance, a field closely related to risk management. Consequently, when applying machine learning models, we must ensure that the attribution methods reflect the underlying risks accurately. In this work, we present and study several axioms derived from asset pricing domain knowledge. It is shown that while Shapley value and Integrated Gradients preserve most axioms, neither can satisfy all axioms. Using extensive analytical and empirical examples, we demonstrate how attribution methods can reflect risks and when they should not be used.
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