reklama - zainteresowany?

Machine Learning for Financial Risk Management with Python - Helion

Machine Learning for Financial Risk Management with Python
ebook
Autor: Abdullah Karasan
ISBN: 9781492085201
stron: 334, Format: ebook
Data wydania: 2021-12-07
Księgarnia: Helion

Cena książki: 177,65 zł (poprzednio: 206,57 zł)
Oszczędzasz: 14% (-28,92 zł)

Dodaj do koszyka Machine Learning for Financial Risk Management with Python

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

Dodaj do koszyka Machine Learning for Financial Risk Management with Python

 

Osoby które kupowały "Machine Learning for Financial Risk Management with Python", wybierały także:

  • Windows Media Center. Domowe centrum rozrywki
  • Ruby on Rails. Ćwiczenia
  • DevOps w praktyce. Kurs video. Jenkins, Ansible, Terraform i Docker
  • Przywództwo w Å›wiecie VUCA. Jak być skutecznym liderem w niepewnym Å›rodowisku
  • Scrum. O zwinnym zarzÄ…dzaniu projektami. Wydanie II rozszerzone

Dodaj do koszyka Machine Learning for Financial Risk Management with Python

Spis treści

Machine Learning for Financial Risk Management with Python eBook -- spis treści

  • Preface
    • Conventions Used in This Book
    • Using Code Examples
    • OReilly Online Learning
    • How to Contact Us
    • Acknowledgements
  • I. Risk Management Foundations
  • 1. Fundamentals of Risk Management
    • Risk
    • Return
    • Risk Management
      • Main Financial Risks
        • Market risk
        • Credit risk
        • Liquidity risk
        • Operational risk
      • Big Financial Collapse
    • Information Asymmetry in Financial Risk Management
      • Adverse Selection
      • Moral Hazard
    • Conclusion
    • References
  • 2. Introduction to Time Series Modeling
    • Time Series Components
      • Trend
      • Seasonality
      • Cyclicality
      • Residual
    • Time Series Models
    • White Noise
      • Moving Average Model
      • Autoregressive Model
      • Autoregressive Integrated Moving Average Model
    • Conclusion
    • References
  • 3. Deep Learning for Time Series Modeling
    • Recurrent Neural Networks
    • Long-Short Term Memory
    • Conclusion
    • References
  • II. Machine Learning for Market, Credit, Liquidity, and Operational Risks
  • 4. Machine Learning-Based Volatility Prediction
    • ARCH Model
    • GARCH Model
    • GJR-GARCH
    • EGARCH
    • Support Vector Regression: GARCH
    • Neural Networks
    • The Bayesian Approach
      • Markov Chain Monte Carlo
      • MetropolisHastings
    • Conclusion
    • References
  • 5. Modeling Market Risk
    • Value at Risk (VaR)
      • Variance-Covariance Method
      • The Historical Simulation Method
      • The Monte Carlo Simulation VaR
    • Denoising
    • Expected Shortfall
    • Liquidity-Augmented Expected Shortfall
    • Effective Cost
    • Conclusion
    • References
  • 6. Credit Risk Estimation
    • Estimating the Credit Risk
    • Risk Bucketing
    • Probability of Default Estimation with Logistic Regression
      • Probability of Default Estimation with the Bayesian Model
      • Probability of Default Estimation with Support Vector Machines
      • Probability of Default Estimation with Random Forest
      • Probability of Default Estimation with Neural Network
      • Probability of Default Estimation with Deep Learning
    • Conclusion
    • References
  • 7. Liquidity Modeling
    • Liquidity Measures
      • Volume-Based Liquidity Measures
        • Liquidity ratio
        • Hui-Heubel ratio
        • Turnover ratio
      • Transaction CostBased Liquidity Measures
        • Percentage quoted and effective bid-ask spreads
        • Rolls spread estimate
        • The Corwin-Schultz spread
      • Price ImpactBased Liquidity Measures
        • Amihud illiquidity
        • The price impact ratio
        • Coefficient of elasticity of trading
      • Market Impact-Based Liquidity Measures
    • Gaussian Mixture Model
    • Gaussian Mixture Copula Model
    • Conclusion
    • References
  • 8. Modeling Operational Risk
    • Getting Familiar with Fraud Data
    • Supervised Learning Modeling for Fraud Examination
      • Cost-Based Fraud Examination
      • Saving Score
      • Cost-Sensitive Modeling
      • Bayesian Minimum Risk
    • Unsupervised Learning Modeling for Fraud Examination
      • Self-Organizing Map
      • Autoencoders
        • Undercomplete autoencoders
        • Sparse autoencoder
        • Denoising autoencoders
    • Conclusion
    • References
  • III. Modeling Other Financial Risk Sources
  • 9. A Corporate Governance Risk Measure: Stock Price Crash
    • Stock Price Crash Measures
    • Minimum Covariance Determinant
    • Application of Minimum Covariance Determinant
    • Logistic Panel Application
    • Conclusion
    • References
  • 10. Synthetic Data Generation and The Hidden Markov Model in Finance
    • Synthetic Data Generation
    • Evaluation of the Synthetic Data
    • Generating Synthetic Data
    • A Brief Introduction to the Hidden Markov Model
    • Fama-French Three-Factor Model Versus HMM
    • Conclusion
    • References
  • Afterword
  • Index

Dodaj do koszyka Machine Learning for Financial Risk Management with Python

Code, Publish & WebDesing by CATALIST.com.pl



(c) 2005-2024 CATALIST agencja interaktywna, znaki firmowe należą do wydawnictwa Helion S.A.