Machine learning is an increasingly important and controversial topic in quantitative finance. A lively debate persists as to whether machine learning techniques can be practical investment tools. Although machine learning algorithms can uncover subtle, contextual, and nonlinear relationships, overfitting poses a major challenge when one is trying to extract signals from noisy historical data. We describe some of the basic concepts of machine learning and provide a simple example of how investors can use machine learning techniques to forecast the cross-section of stock returns while limiting the risk of overfitting.
CITATION STYLE
Rasekhschaffe, K. C., & Jones, R. C. (2019). Machine Learning for Stock Selection. Financial Analysts Journal, 75(3), 70–88. https://doi.org/10.1080/0015198X.2019.1596678
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