Footnotes
1 See for instance, Gu, Kelly, and Xiu, 2020, “Empirical Asset Pricing via Machine Learning”, The Review of Financial Studies for the United States, Tobek and Hronec, 2021, “Does it pay to follow anomalies research? Machine learning approach with international evidence”, Journal of Financial Markets for developed markets, and Hanauer and Kalsbach, 2023, “Machine learning and the cross-section of emerging market stock returns”, Emerging Markets Review for emerging markets. For a discussion of the promises and pitfalls of ML, we also refer to and Leung, Lohre, Mischlich, Shea, and Stroh, 2021, “The Promises and Pitfalls of Machine Learning for Predicting Stock Returns”, The Journal of Financial Data Science, Blitz, Hoogteijling, and Lohre, 2023, “Researchers have just been scratching the surface of ML in asset management”, Robeco article, and Chen and Zhou, 2023, “Machine learning in finance: Why and how?”, Robeco article.
2 See Shapley, 1953. “A Value for n-person Games.” Contributions to the Theory of Games. Annals of Mathematical Studies.
3 Short-term momentum is a proprietary signal with a lookback of one month that captures systematic short-term momentum effects such as industry, country, and factor momentum.