Derivatives Analytics with Python

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Bibliographische Detailangaben
1. Verfasser: Hilpisch, Yves
Veröffentlicht:
John Wiley & Sons, Incorporated
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Online-Zugang:Full Text - Ebook
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020 |a 9781119038009 
035 |a 2131281198 
045 0 |b d20150803 
100 1 |a Hilpisch, Yves 
245 1 |a Derivatives Analytics with Python 
260 |a GB  |b John Wiley & Sons, Incorporated  |c Aug 3, 2015 
513 |a Book 
520 3 |a Market-based valuation of stock index options is an essential task for every buy-side and sell-side decision maker in the derivatives analytics domain. In Derivatives Analytics with Python, you'll discover why Python has established itself in the financial industry and how to leverage this powerful programming language so you can implement market-consistent valuation and hedging approaches. Written for Quant developers, traders, risk managers, compliance officers, and model validators, this reliable resource skillfully covers the four areas necessary to effectively value options: market-based valuation as a process; sound market model; numerical techniques; and technology. Presented in three parts, Part One looks at the risks affecting the value of equity index options and empirical facts regarding stocks and interest rates. Part Two covers arbitrage pricing theory, risk-neutral valuation in discrete time, continuous time, and introduces the two popular methods of Carr-Madan and Lewis for Fourier-based option pricing. Finally, Part Three considers the whole process of a market-based valuation effort and the Monte Carlo simulation as the method of choice for the valuation of exotic and complex index options and derivatives. Practical and informative, with self-contained Python scripts and modules and 5,000+ lines of code provided to help you reproduce the results and graphics presented. In addition, the companion website (http://wiley.quant-platform.com) features all code and IPython Notebooks for immediate execution and automation. Author Yves Hilpisch explores market-based valuation as a process, as well as empirical findings about market realities. By reading this book, you'll be equipped to develop much-needed tools during a market-based valuation with balanced coverage of: Market-based valuation Risk-neutral valuation Discrete market models Black-Scholes-Merton Model Fourier-based option pricing Valuation of American options Stochastic volatility and jump-diffusion models Model calibration Simulation and valuation Python is gaining ground in the derivatives analytics space, allowing institutions to quickly and efficiently deliver pricing, trading, and risk management results. Learn to implement market-consistent valuation and hedging approaches for European and American options with the solid guidance found in Derivatives Analytics with Python. Market-based valuation of stock index options is an essential task for every buy-side and sell-side decision maker in the derivatives analytics domain. In Derivatives Analytics with Python, you'll discover why Python has established itself in the financial industry and how to leverage this powerful programming language so you can implement market-consistent valuation and hedging approaches. Written for Quant developers, traders, risk managers, compliance officers, and model validators, this reliable resource skillfully covers the four areas necessary to effectively value options: market-based valuation as a process; sound market model; numerical techniques; and technology. Presented in three parts, Part One looks at the risks affecting the value of equity index options and empirical facts regarding stocks and interest rates. Part Two covers arbitrage pricing theory, risk-neutral valuation in discrete time, continuous time, and introduces the two popular methods of Carr-Madan and Lewis for Fourier-based option pricing. Finally, Part Three considers the whole process of a market-based valuation effort and the Monte Carlo simulation as the method of choice for the valuation of exotic and complex index options and derivatives. Practical and informative, with self-contained Python scripts and modules and 5,000+ lines of code provided to help you reproduce the results and graphics presented. In addition, the companion website (http://wiley. quant-platform.com) features all code and IPython Notebooks for immediate execution and automation. Author Yves Hilpisch explores market-based valuation as a process, as well as empirical findings about market realities. By reading this book, you'll be equipped to develop much-needed tools during a market-based valuation with balanced coverage of: Market-based valuation Risk-neutral valuation Discrete market models Black-Scholes-Merton Model Fourier#45;based option pricing Valuation of American options Stochastic volatility and jump-diffusion models Model calibration Simulation and valuation Python is gaining ground in the derivatives analytics space, allowing institutions to quickly and efficiently deliver pricing, trading, and risk management results. Learn to implement market-consistent valuation and hedging approaches for European and American options with the solid guidance found in Derivatives Analytics with Python. YVES HILPISCH is founder and Managing Partner of The Python Quants, a group that focuses on Python & Open Source Software for Quantitative Finance. Yves is also a Computational Finance Lecturer on the CQF Program. He works with clients in the financial industry around the globe and has ten years of experience with Python. Yves is the organizer of Python and Open Source for Quant Finance conferences and meetup groups in Frankfurt, London and New York City. 
653 |a Arbitrage 
653 |a Investments 
653 |a Python (Computer program language) 
653 |a Hedging (Finance) 
653 |a Books 
653 |a Calibration 
653 |a Economic conditions 
653 |a Derivative securities 
653 |a Diffusion models 
653 |a Data analysis 
653 |a Automation 
653 |a Interest rates 
653 |a Python 
653 |a Monte Carlo simulation 
653 |a Computers 
653 |a Programming languages 
653 |a Hedging 
653 |a Valuation 
653 |a Fourier transforms 
653 |a Securities 
653 |a Volatility 
653 |a Derivatives 
653 |a Business conditions 
653 |a Options markets 
653 |a Risk management 
653 |a Derivative securities. ; Hedging (Finance). ; Python (Computer program language). 
653 |a Economic condition 
773 0 |t Derivatives Analytics with Python  |g (Aug 3, 2015) 
786 0 |d ProQuest  |t Ebook Central 
856 4 0 |3 Full Text - Ebook  |u https://www.proquest.com/docview/2131281198//embedded/H09TXR3UUZB2ISDL?source=fedsrch