Machine Learning for Volatility Forecasting: LSTMs, Transformers, and Regime Models: Deep Learning Models for Realized Volatility, Implied Vol Surfaces, and Regime-Switching Risk in Python by James Preston, Danny Munrow
English | September 18, 2025 | ISBN: N/A | ASIN: B0FRRDZVK9 | 681 pages | EPUB | 0.60 Mb
Reactive Publishing
Volatility drives everything, options pricing, risk management, and portfolio returns. Machine Learning for Volatility Forecasting is the definitive guide to applying deep learning architectures to predict realized volatility, implied vol surfaces, and regime shifts with precision.
This hands-on book teaches you to build LSTM networks, attention-based Transformers, and hybrid ML models that outperform classical GARCH approaches. Using Python and open-source libraries, you'll create scalable pipelines for volatility prediction, backtest their performance, and deploy them for real-time risk management.
Inside, you'll learn how to
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