La Milano

Quantitative Finance with Python: A Practical Guide to Investment Management,

Description: Section I. Foundations of Quant Modeling. 1. Setting the Stage: Quant Landscape. 1.1. Introduction. 1.2. Quant Finance Institutions. 1.3. Most Common Quant Career Paths. 1.4. Types of Financial Instruments. 1.5. Stages of a Quant Project. 1.6. Trends: Where is Quant Finance Going? 2. Theoretical Underpinnings of Quant Modeling: Modeling the Risk Neutral Measure. 2.1. Introduction. 2.2. Risk Neutral Pricing & No Arbitrage. 2.3. Binomial Trees. 2.4. Building Blocks of Stochastic Calculus. 2.5. Stochastic Differential Equations. 2.6. Itô¿s Lemma. 2.7. Connection between SDEs and PDES. 2.8. Girsanov¿s Theorem. 3. Theoretical Underpinnings of Quant Modeling: Modeling the Physical Measure. 3.1. Introduction: Forecasting vs. Replication. 3.2. Market Efficiency and Risk Premia. 3.3. Linear Regression Models. 3.4. Time Series Models. 3.5. Panel Regression Models. 3.6. Core Portfolio and Investment Concepts. 3.7. Bootstrapping. 3.8. Principal Component Analysis. 3.9. Conclusions: Comparison to Risk Neutral Measure Modelling. 4. Python Programming Environment. 4.1. The Python Programming Language. 4.2. Advantages and Disadvantages of Python. 4.3. Python Development Environments. 4.4. Basic Programming Concepts in Python. 5. Programming Concepts in Python. 5.1. Introduction. 5.2. Numpy Library. 5.3. Pandas Library. 5.4. Data Structures in Python. 5.5. Implementation of Quant Techniques in Python. 5.6. Object-Oriented Programming in Python. 5.7. Design Patterns. 5.8. Search Algorithms. 5.9. Sort Algorithms. 6. Working with Financial Datasets. 6.1. Introduction. 6.2. Data Collection. 6.3. Common Financial Datasets. 6.4. Common Financial Data Sources. 6.5. Cleaning Different Types of Financial Data. 6.6. Handling Missing Data. 6.7. Outlier Detection. 7. Model Validation. 7.1. Why Is Model Validation So Important? 7.2. How Do We Ensure Our Models Are Correct? 7.3. Components of a Model Validation Process. 7.4. Goals of Model Validation. 7.5. Trade-off between Realistic Assumptions and Parsimony in Models. Section II. Options Modeling. 8. Stochastic Models. 8.1. Simple Models. 8.2. Stochastic Volatility Models. 8.3. Jump Diffusion Models. 8.4. Local Volatility Models. 8.5. Stochastic Local Volatility Models. 8.6. Practicalities of using these Models. 9. Options Pricing Techniques for European Options. 9.1. Models with Closed Form Solutions or Asymptotic Approximations. 9.2. Option Pricing via Quadrature. 9.3. Option Pricing via FFT. 9.4. Root Finding. 9.5. Optimization Techniques. 9.6. Calibration of Volatility Surfaces. 10. Options Pricing Techniques for Exotic Options. 10.1. Introduction. 10.2. Simulation. 10.3. Numerical Solutions to PDEs. 10.4. Modeling Exotic Options in Practice. 11. Greeks and Options Trading. 11.1. Introduction. 11.2. Black-Scholes Greeks. 11.3. Theta vs. Gamma. 11.4. Model Dependence of Greeks. 11.5. Greeks for Exotic Options. 11.6. Estimation of Greeks via Finite Differences. 11.7. Smile Adjusted Greeks. 11.8. Hedging in Practice. 11.9. Common Options Trading Structures. 11.10. Volatility as an Asset Class. 11.11. Risk Premia in the Options Market: Implied vs. Realized Volatility. 11.12. Case Study: GameStop Reddit Mania. 12. Extraction of Risk Neutral Densities. 12.1. Motivation. 12.2. Breden¿Litzenberger. 12.3. Connection Between Risk Neutral Distributions and Market Instruments. 12.4. Optimization Framework for Non-Parametric Density Extraction. 12.5. Weigthed Monte Carlo. 12.6. Relationship between Volatility skew and Risk Neutral Densities. 12.7. Risk Premia in the Options Market: Comparison OF Risk Neutral vs. Physical Measures. 12.8. Conclusions & Assessment of Parametric vs. Non-Parametric Methods. Section III. Quant Modelling in Different Markets. 13. Interest Rate Markets. 13.1. Market Setting. 13.2. Bond Pricing Concepts. 13.3. Main Components of a Yield Curve. 13.4. Market Rates. 13.5. Yield Curve Construction. 13.6. Modelling Interest Rate Derivatives. 13.7 Modeling Volatility for a Single Rate: Caps / Floors. 13.8. Modeling Volatility for a Single Rate: Swaptions. 13.9. Modelling the Term Structure: Short Rate Models. 13.10. Modelling the Term Structure: Forward Rate Models. 13.11. Exotic Options. 13.12. Investment Perspective: Traded Structures. 13.13. Case Study: Introduction of Negative Rates. 14. Credit Markets. 14.1. Market Setting. 14.2. Modeling Default Risk: Hazard Rate Models. 14.3. Risky Bond. 14.4. Credit Default Swaps. 14.5. CDS vs. Corporate Bonds. 14.6. Bootstrapping a Survival Curve. 14.7. Indices of Credit Default Swaps. 14.8. Market Implied vs. Empirical Default Probabilities. 14.9. Options on CDS & CDX Indices. 14.10. Modeling Correlation: CDOS. 14.11. Models Connecting Equity and Credit. 14.12. Mortgage-backed Securities. 14.13. Investment Perspective: Traded Structures. 15. Foreign Exchange Markets. 15.1. Market Setting. 15.2. Modeling in a Currency Setting. 15.3. Volatility Smiles IN Foreign Exchange Markets. 15.4. Exotic Options in Foreign Exchange Markets. 15.5. Investment Perspective: Traded Structures. 15.6. Case Study: CHF Peg Break in 2015. 16. Equity & Commodity Markets. 16.1. Market Setting. 16.2. Futures Curves in Equity & Commodity Markets. 16.3. Volatility Surfaces in Equity & Commodity Markets. 16.4. Exotic Options in Equity & Commodity Markets. 16.5. Investment Perspective: Traded Structures. 16.6. Case Study: Nat Gas Short Squeeze. 16.7. Case Study: Volatility ETP Apocalypse of 2018. Section IV. Portfolio Construction & Risk Management. 17. Portfolio Construction & Optimization Techniques. 17.1. Theoretical Background. 17.2. Mean-Variance Optimization. 17.3. Challenges Associated with Mean-Variance Optimization. 17.4. Capital Asset Pricing Model. 17.5. Black-Litterman. 17.6. Resampling. 17.7. Downside Risk Based Optimization. 17.8. Risk Parity. 17.9. Comparison OF Methodologies. 18. Modelling Expected Returns and Covariance Matrices. 18.1. Single & Multi-Factor Models for Expected Returns. 18.2. Modelling Volatility. 19. Risk Management. 19.1. Motivation & Setting. 19.2. Common Risk Measures. 19.3. Calculation of Portfolio VAR and CVAR. 19.4. Risk Management of Non-Linear Instruments. 19.5. Risk Management in Rates & Credit Markets. 20. Quantitative Trading Models. 20.1. Introduction to Quant Trading Models. 20.2. Back-Testing. 20.3. Common Stat-Arb Strategies. 20.4. Systematic Options Based Strategies. 20.5. Combining Quant Strategies. 20.6. Principles of Discretionary vs. Systematic Investing. 21. Incorporating Machine Learning Techniques. 21.1. Machine Learning Framework. 21.2. Supervised vs. Unsupervised Learning Methods. 21.3. Clustering. 21.4. Classification Techniques. 21.5. Feature Importance & Interpretability. 21.6. Other Applications OF Machine Learning. Bibliography. Index

Price: 115 USD

Location: Matraville, NSW

End Time: 2024-12-05T01:07:43.000Z

Shipping Cost: 0 USD

Product Images

Quantitative Finance with Python: A Practical Guide to Investment Management,Quantitative Finance with Python: A Practical Guide to Investment Management,Quantitative Finance with Python: A Practical Guide to Investment Management,

Item Specifics

Return shipping will be paid by: Buyer

All returns accepted: Returns Accepted

Item must be returned within: 60 Days

Refund will be given as: Money Back

Return policy details:

EAN: 9781032014432

UPC: 9781032014432

ISBN: 9781032014432

MPN: N/A

Book Title: Quantitative Finance with Python: A Practical Guid

Item Height: 3.8 cm

Number of Pages: 659 Pages

Language: English

Publication Name: Quantitative Finance with Python

Publisher: CRC Press LLC

Subject: Finance / General, General, Applied

Publication Year: 2022

Item Weight: 51.4 Oz

Type: Textbook

Author: Chris Kelliher

Subject Area: Mathematics, Business & Economics

Item Length: 10 in

Series: Chapman and Hall/Crc Financial Mathematics Ser.

Item Width: 7 in

Format: Hardcover

Recommended

Machine Learning for Asset Managers (Elements in Quantitative Finance)
Machine Learning for Asset Managers (Elements in Quantitative Finance)

$17.88

View Details
Real Stats: Using Econometrics for Political Science and Public Policy
Real Stats: Using Econometrics for Political Science and Public Policy

$33.48

View Details
Quantitative Trading with R: Understanding Mathematical and Computational To...
Quantitative Trading with R: Understanding Mathematical and Computational To...

$10.61

View Details
Quantitative Methods: for Business, Management and Finance by Sally Piff, Louise
Quantitative Methods: for Business, Management and Finance by Sally Piff, Louise

$37.81

View Details
Computational Economics and Finance: Modeling and Analysis with Mathemati - GOOD
Computational Economics and Finance: Modeling and Analysis with Mathemati - GOOD

$18.37

View Details
Fixed Income Finance: A Quantitative Approach  Like New
Fixed Income Finance: A Quantitative Approach Like New

$33.00

View Details
F# for Quantitative Finance - Paperback By Astborg, Johan - GOOD
F# for Quantitative Finance - Paperback By Astborg, Johan - GOOD

$13.03

View Details
Essential Quantitative Methods: For Business, Management and Finance by Oakshott
Essential Quantitative Methods: For Business, Management and Finance by Oakshott

$33.97

View Details
Quantitative Financial Risk Management (Wiley Finance), Miller, Michael B., 9781
Quantitative Financial Risk Management (Wiley Finance), Miller, Michael B., 9781

$14.95

View Details
A Benchmark Approach to Quantitative Finance by Eckhard Platen: New
A Benchmark Approach to Quantitative Finance by Eckhard Platen: New

$63.89

View Details