机器学习和大数据的期权回报可预测性

IF 6.8 1区 经济学 Q1 BUSINESS, FINANCE
Turan G. Bali, Heiner Beckmeyer, Mathis Rudolf Werner Mörke, Florian Weigert
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引用次数: 7

摘要

摘要:根据1996年至2020年期间超过1200万次的观察结果,我们发现在预测未来期权收益时,允许非线性显著提高了期权和股票特征的样本外表现。非线性机器学习模型在股票期权的多空组合中产生统计上和经济上可观的利润,即使在考虑交易成本之后。尽管基于期权的特征是最重要的独立预测指标,但当与基于期权的特征一起考虑时,基于股票的指标提供了实质性的增量预测能力。最后,我们提供了令人信服的证据,证明期权收益的可预测性是由信息摩擦和期权错误定价驱动的。作者们提供了一份互联网附录,可以在牛津大学出版社的网站上找到,就在最终发表论文的链接旁边。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Option Return Predictability with Machine Learning and Big Data
Abstract Drawing upon more than 12 million observations over the period from 1996 to 2020, we find that allowing for nonlinearities significantly increases the out-of-sample performance of option and stock characteristics in predicting future option returns. The nonlinear machine learning models generate statistically and economically sizable profits in the long-short portfolios of equity options even after accounting for transaction costs. Although option-based characteristics are the most important standalone predictors, stock-based measures offer substantial incremental predictive power when considered alongside option-based characteristics. Finally, we provide compelling evidence that option return predictability is driven by informational frictions and option mispricing. Authors have furnished an Internet Appendix, which is available on the Oxford University Press Web site next to the link to the final published paper online.
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来源期刊
CiteScore
16.00
自引率
2.40%
发文量
83
期刊介绍: The Review of Financial Studies is a prominent platform that aims to foster and widely distribute noteworthy research in financial economics. With an expansive editorial board, the Review strives to maintain a balance between theoretical and empirical contributions. The primary focus of paper selection is based on the quality and significance of the research to the field of finance, rather than its level of technical complexity. The scope of finance within the Review encompasses its intersection with economics. Sponsoring The Society for Financial Studies, the Review and the Society appoint editors and officers through limited terms.
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