Skip to content
Scan a barcode
Scan
Paperback Machine Learning Models in Quantitative Finance: A Practical Guide to Forecasting, Pricing, and Signal Generation Book

ISBN: B0F4Y8MM4L

ISBN13: 9798280005969

Machine Learning Models in Quantitative Finance: A Practical Guide to Forecasting, Pricing, and Signal Generation

Reactive Publishing

Machine Learning Models in Quantitative Finance: A Practical Guide to Forecasting, Pricing, and Signal Generation

By Vincent Bisette

Unlock the power of machine learning in financial markets-without needing a PhD in data science.

This hands-on guide delivers a focused, tactical approach to integrating machine learning into quantitative finance. Designed for analysts, traders, and finance professionals, this book demystifies the process of applying ML to real-world financial data for forecasting, pricing models, and signal generation.

Inside, you'll discover:

Practical ML models tailored for time series, options pricing, and strategy development

Step-by-step implementation using Python and Excel

Techniques to engineer features, reduce overfitting, and optimize model performance

Case studies on using random forests, XGBoost, and neural networks for alpha generation

How to build ML pipelines that integrate seamlessly with existing quant workflows

You won't find generic theory or fluff-just battle-tested tools and frameworks that work in volatile markets. Whether you're building your first predictive model or fine-tuning your algo trading stack, this book gives you the edge.

Finance moves fast. So should your models.

Recommended

Format: Paperback

Condition: New

$40.16
Save $2.83!
List Price $42.99
50 Available
Ships within 2-3 days

Customer Reviews

0 rating
Copyright © 2025 Thriftbooks.com Terms of Use | Privacy Policy | Do Not Sell/Share My Personal Information | Cookie Policy | Cookie Preferences | Accessibility Statement
ThriftBooks ® and the ThriftBooks ® logo are registered trademarks of Thrift Books Global, LLC
GoDaddy Verified and Secured
Timestamp: 9/30/2025 6:53:07 AM
Server Address: 10.21.32.133