ML for trading – strategies and use cases
In practice, we apply ML to trading in the context of a specific strategy to meet a certain business goal. In this section, we briefly describe how trading strategies have evolved and diversified, and outline real-world examples of ML applications, highlighting how they relate to the content covered in this book.
The evolution of algorithmic strategies
Quantitative strategies have evolved and become more sophisticated in three waves:
- In the 1980s and 1990s, signals often emerged from academic research and used a single or very few inputs derived from market and fundamental data. AQR, one of the largest quantitative hedge funds today, was founded in 1998 to implement such strategies at scale. These signals are now largely commoditized and available as ETF, such as basic mean-reversion strategies.
- In the 2000s, factor-based investing proliferated based on the pioneering work by Eugene Fama and Kenneth French and...