Derivatives analytics with Python : data analysis, models, simulation, calibration and hedging / Yves Hilpisch.

By: Hilpisch, Yves JMaterial type: TextTextSeries: Wiley finance series: Publisher: Chichester : Wiley, 2015Description: xvii, 356 pages : illustrations ; 25 cmContent type: text Media type: unmediated Carrier type: volumeISBN: 9781119037996Subject(s): Derivative securities | Hedging (Finance) | Python (Computer program language) | Derivative securities | Hedging (Finance) | Python (Computer program language)Additional physical formats: Online version:: Derivatives analytics with Python.DDC classification: 332.64/5702855133 LOC classification: HG6024.A3 | .H56 2015Online resources: Cover image | Cover image
Contents:
1. A quick tour -- 2. What is market-based valuation? -- 3. Market stylized facts -- 4. Risk-neutral valuation -- 5. Complete market models -- 6. Fourier-based option pricing -- 7. Valuation of American options by simulation -- 8. A first example of market-based valuation -- 9. General model framework -- 10. Monte Carlo simulation -- 11. Model calibration -- 12. Simulation and valuation in the general model framework -- 13. Dynamic hedging -- 14. Executive summary -- Appendix A. Python in a nutshell.
Summary: "Supercharge options analytics and hedging using the power of Python Derivatives Analytics with Python shows you how to implement market-consistent valuation and hedging approaches using advanced financial models, efficient numerical techniques, and the powerful capabilities of the Python programming language. This unique guide offers detailed explanations of all theory, methods, and processes, giving you the background and tools necessary to value stock index options from a sound foundation. You'll find and use self-contained Python scripts and modules and learn how to apply Python to advanced data and derivatives analytics as you benefit from the 5,000+ lines of code that are provided to help you reproduce the results and graphics presented. Coverage includes market data analysis, risk-neutral valuation, Monte Carlo simulation, model calibration, valuation, and dynamic hedging, with models that exhibit stochastic volatility, jump components, stochastic short rates, and more. The companion website features all code and IPython Notebooks for immediate execution and automation. Python is gaining ground in the derivatives analytics space, allowing institutions to quickly and efficiently deliver portfolio, trading, and risk management results. This book is the finance professional's guide to exploiting Python's capabilities for efficient and performing derivatives analytics. Reproduce major stylized facts of equity and options markets yourself Apply Fourier transform techniques and advanced Monte Carlo pricing Calibrate advanced option pricing models to market data Integrate advanced models and numeric methods to dynamically hedge options Recent developments in the Python ecosystem enable analysts to implement analytics tasks as performing as with C or C++, but using only about one-tenth of the code or even less. Derivatives Analytics with Python -- Data Analysis, Models, Simulation, Calibration and Hedging shows you what you need to know to supercharge your derivatives and risk analytics efforts"-- Provided by publisher.
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Item type Current library Call number Copy number Status Notes Date due Barcode
Books Books Female Library
HG6024.A3 .H56 2015 (Browse shelf (Opens below)) 1 Available STACKS 51952000198093
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HG6024.A3 .H56 2015 (Browse shelf (Opens below)) 1 Available STACKS 51952000198086

Includes bibliographical references (pages 341-345) and index.

"Supercharge options analytics and hedging using the power of Python Derivatives Analytics with Python shows you how to implement market-consistent valuation and hedging approaches using advanced financial models, efficient numerical techniques, and the powerful capabilities of the Python programming language. This unique guide offers detailed explanations of all theory, methods, and processes, giving you the background and tools necessary to value stock index options from a sound foundation. You'll find and use self-contained Python scripts and modules and learn how to apply Python to advanced data and derivatives analytics as you benefit from the 5,000+ lines of code that are provided to help you reproduce the results and graphics presented. Coverage includes market data analysis, risk-neutral valuation, Monte Carlo simulation, model calibration, valuation, and dynamic hedging, with models that exhibit stochastic volatility, jump components, stochastic short rates, and more. The companion website features all code and IPython Notebooks for immediate execution and automation. Python is gaining ground in the derivatives analytics space, allowing institutions to quickly and efficiently deliver portfolio, trading, and risk management results. This book is the finance professional's guide to exploiting Python's capabilities for efficient and performing derivatives analytics. Reproduce major stylized facts of equity and options markets yourself Apply Fourier transform techniques and advanced Monte Carlo pricing Calibrate advanced option pricing models to market data Integrate advanced models and numeric methods to dynamically hedge options Recent developments in the Python ecosystem enable analysts to implement analytics tasks as performing as with C or C++, but using only about one-tenth of the code or even less. Derivatives Analytics with Python -- Data Analysis, Models, Simulation, Calibration and Hedging shows you what you need to know to supercharge your derivatives and risk analytics efforts"-- Provided by publisher.

1. A quick tour -- 2. What is market-based valuation? -- 3. Market stylized facts -- 4. Risk-neutral valuation -- 5. Complete market models -- 6. Fourier-based option pricing -- 7. Valuation of American options by simulation -- 8. A first example of market-based valuation -- 9. General model framework -- 10. Monte Carlo simulation -- 11. Model calibration -- 12. Simulation and valuation in the general model framework -- 13. Dynamic hedging -- 14. Executive summary -- Appendix A. Python in a nutshell.

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