| Management number | 220491499 | Release Date | 2026/05/03 | List Price | US$12.00 | Model Number | 220491499 | ||
|---|---|---|---|---|---|---|---|---|---|
| Category | |||||||||
Reactive PublishingModern portfolio management increasingly relies on machine learning to analyze complex financial data, identify hidden patterns, and support more adaptive investment strategies. Machine Learning for Portfolio Construction explores how quantitative methods can be applied to portfolio design, risk allocation, and hedging decisions in contemporary financial markets.This book introduces the practical use of machine learning techniques within the core framework of portfolio management. Rather than focusing only on predictive models, it examines how data-driven methods can support portfolio construction decisions such as asset allocation, volatility balancing, and dynamic hedging under changing market conditions.Readers will learn how machine learning models interact with traditional portfolio theory, including risk-based allocation frameworks and systematic hedging approaches used by institutional investors.Topics covered include:Foundations of portfolio construction and risk allocationMachine learning approaches for financial data analysisAsset allocation models using predictive and clustering methodsRisk parity frameworks and volatility-based portfolio designDynamic hedging strategies informed by data-driven signalsModel evaluation, robustness, and regime awareness in marketsThe book combines conceptual explanations with practical examples relevant to quantitative finance, asset management, and systematic trading environments.Machine Learning for Portfolio Construction is designed for quantitative analysts, portfolio managers, financial engineers, and advanced students seeking to understand how modern machine learning tools can be integrated into portfolio design and risk management workflows. Read more
| ISBN13 | 979-8250944472 |
|---|---|
| Language | English |
| Publisher | Independently published |
| Dimensions | 6 x 1.21 x 9 inches |
| Item Weight | 1.96 pounds |
| Print length | 536 pages |
| Publication date | March 6, 2026 |
If you notice any omissions or errors in the product information on this page, please use the correction request form below.
Correction Request Form