- Home
- Computers
- Desktop Applications
- Machine Learning for Financial Risk Management with Python (Algorithms for Modeling Risk)
Machine Learning for Financial Risk Management with Python (Algorithms for Modeling Risk)
- Availability: Confirm prior to ordering
- Branding: minimum 50 pieces (add’l costs below)
- Check Freight Rates (branded products only)
Branding Options (v), Availability & Lead Times
- 1-Color Imprint: $2.00 ea.
- Promo-Page Insert: $2.50 ea. (full-color printed, single-sided page)
- Belly-Band Wrap: $2.50 ea. (full-color printed)
- Set-Up Charge: $45 per decoration
- Availability: Product availability changes daily, so please confirm your quantity is available prior to placing an order.
- Branded Products: allow 10 business days from proof approval for production. Branding options may be limited or unavailable based on product design or cover artwork.
- Unbranded Products: allow 3-5 business days for shipping. All Unbranded items receive FREE ground shipping in the US. Inquire for international shipping.
- RETURNS/CANCELLATIONS: All orders, branded or unbranded, are NON-CANCELLABLE and NON-RETURNABLE once a purchase order has been received.
Product Details
Overview
Financial risk management is quickly evolving with the help of artificial intelligence. With this practical book, developers, programmers, engineers, financial analysts, risk analysts, and quantitative and algorithmic analysts will examine Python-based machine learning and deep learning models for assessing financial risk. Building hands-on AI-based financial modeling skills, you'll learn how to replace traditional financial risk models with ML models.
Author Abdullah Karasan helps you explore the theory behind financial risk modeling before diving into practical ways of employing ML models in modeling financial risk using Python. With this book, you will:
- Review classical time series applications and compare them with deep learning models
- Explore volatility modeling to measure degrees of risk, using support vector regression, neural networks, and deep learning
- Improve market risk models (VaR and ES) using ML techniques and including liquidity dimension
- Develop a credit risk analysis using clustering and Bayesian approaches
- Capture different aspects of liquidity risk with a Gaussian mixture model and Copula model
- Use machine learning models for fraud detection
- Predict stock price crash and identify its determinants using machine learning models








