Reactive Publishing
This book explores the practical application of alternative data and machine learning techniques in equity investing.
It examines how investors and analysts source, process, and analyze non-traditional datasets - including web data, satellite imagery, credit card transactions, shipping data, and more - to generate investment signals. The text covers key technical approaches such as data scraping methodologies, feature engineering, and the implementation of machine learning models specifically tailored for equity market analysis.
Readers will find detailed discussions on data acquisition, cleaning, and integration with traditional financial data, along with real-world case studies and methodological frameworks. The book emphasizes the technical and operational realities of working with alternative data, including challenges related to data quality, regulatory considerations, and model validation.
Whether you are a quantitative researcher, data scientist, or investment professional, this book provides a structured overview of the tools, techniques, and processes used at the intersection of alternative data and machine learning in modern equity investing.
Key topics include:
This book is for educational and informational purposes only and does not constitute investment advice.