Design Choices in ML and the Cross-Section of Stock Returns

Quantpedia
Dec 17, 2024

--

For those who have not yet had the chance to read it, we recommend the latest empirical study by Minghui Chen, Matthias X. Hanauer, and Tobias Kalsbach, which shows that design choices in machine learning models, such as feature selection and hyperparameter tuning, are crucial to improving portfolio performance. Non-standard errors in machine learning predictions can lead to substantial portfolio return variations, and authors are highlighting the importance of robust model evaluation techniques.

https://quantpedia.com/design-choices-in-ml-and-the-cross-section-of-stock-returns/

--

--

Quantpedia
Quantpedia

Written by Quantpedia

Quantpedia.com — The Encyclopedia of Quantitative and Algorithmic Trading Strategies

No responses yet