Option Theory with Stochastic Analysis

Option Theory with Stochastic Analysis
Title Option Theory with Stochastic Analysis PDF eBook
Author Fred Espen Benth
Publisher Springer Science & Business Media
Pages 180
Release 2003-11-26
Genre Business & Economics
ISBN 9783540405023

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This is a very basic and accessible introduction to option pricing, invoking a minimum of stochastic analysis and requiring only basic mathematical skills. It covers the theory essential to the statistical modeling of stocks, pricing of derivatives with martingale theory, and computational finance including both finite-difference and Monte Carlo methods.

Option Theory with Stochastic Analysis

Option Theory with Stochastic Analysis
Title Option Theory with Stochastic Analysis PDF eBook
Author Fred Espen Benth
Publisher Springer Science & Business Media
Pages 172
Release 2012-12-06
Genre Business & Economics
ISBN 3642187862

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This is a very basic and accessible introduction to option pricing, invoking a minimum of stochastic analysis and requiring only basic mathematical skills. It covers the theory essential to the statistical modeling of stocks, pricing of derivatives with martingale theory, and computational finance including both finite-difference and Monte Carlo methods.

Introduction to Option Pricing Theory

Introduction to Option Pricing Theory
Title Introduction to Option Pricing Theory PDF eBook
Author Gopinath Kallianpur
Publisher Springer Science & Business Media
Pages 266
Release 2012-12-06
Genre Mathematics
ISBN 1461205115

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Since the appearance of seminal works by R. Merton, and F. Black and M. Scholes, stochastic processes have assumed an increasingly important role in the development of the mathematical theory of finance. This work examines, in some detail, that part of stochastic finance pertaining to option pricing theory. Thus the exposition is confined to areas of stochastic finance that are relevant to the theory, omitting such topics as futures and term-structure. This self-contained work begins with five introductory chapters on stochastic analysis, making it accessible to readers with little or no prior knowledge of stochastic processes or stochastic analysis. These chapters cover the essentials of Ito's theory of stochastic integration, integration with respect to semimartingales, Girsanov's Theorem, and a brief introduction to stochastic differential equations. Subsequent chapters treat more specialized topics, including option pricing in discrete time, continuous time trading, arbitrage, complete markets, European options (Black and Scholes Theory), American options, Russian options, discrete approximations, and asset pricing with stochastic volatility. In several chapters, new results are presented. A unique feature of the book is its emphasis on arbitrage, in particular, the relationship between arbitrage and equivalent martingale measures (EMM), and the derivation of necessary and sufficient conditions for no arbitrage (NA). {\it Introduction to Option Pricing Theory} is intended for students and researchers in statistics, applied mathematics, business, or economics, who have a background in measure theory and have completed probability theory at the intermediate level. The work lends itself to self-study, as well as to a one-semester course at the graduate level.

PDE and Martingale Methods in Option Pricing

PDE and Martingale Methods in Option Pricing
Title PDE and Martingale Methods in Option Pricing PDF eBook
Author Andrea Pascucci
Publisher Springer Science & Business Media
Pages 727
Release 2011-04-15
Genre Mathematics
ISBN 8847017815

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This book offers an introduction to the mathematical, probabilistic and numerical methods used in the modern theory of option pricing. The text is designed for readers with a basic mathematical background. The first part contains a presentation of the arbitrage theory in discrete time. In the second part, the theories of stochastic calculus and parabolic PDEs are developed in detail and the classical arbitrage theory is analyzed in a Markovian setting by means of of PDEs techniques. After the martingale representation theorems and the Girsanov theory have been presented, arbitrage pricing is revisited in the martingale theory optics. General tools from PDE and martingale theories are also used in the analysis of volatility modeling. The book also contains an Introduction to Lévy processes and Malliavin calculus. The last part is devoted to the description of the numerical methods used in option pricing: Monte Carlo, binomial trees, finite differences and Fourier transform.

Introduction to Option Pricing Theory

Introduction to Option Pricing Theory
Title Introduction to Option Pricing Theory PDF eBook
Author G. Kallianpur
Publisher
Pages 268
Release 2000
Genre Options (Finance)
ISBN 9783764341084

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"Since the appearance of seminal works by R. Merton, and F. Black and M. Scholes, stochastic processes have assumed an increasingly important role in the development of the mathematical theory of finance. This work examines, in some detail, that part of stochastic finance pertaining to option pricing theory. Thus the exposition is confined to areas of stochastic finance that are relevant to the theory, omitting such topics as futures and term-structure." "Introduction to Option Pricing Theory is intended for students and researchers in statistics, applied mathematics, business, or economics, who have a background in measure theory and have completed probability theory at the intermediate level. The work lends itself to self-study, as well as to a one-semester course at the graduate level."--BOOK JACKET.Title Summary field provided by Blackwell North America, Inc. All Rights Reserved

Stochastic Analysis, Stochastic Systems, And Applications To Finance

Stochastic Analysis, Stochastic Systems, And Applications To Finance
Title Stochastic Analysis, Stochastic Systems, And Applications To Finance PDF eBook
Author Allanus Hak-man Tsoi
Publisher World Scientific
Pages 274
Release 2011-06-10
Genre Mathematics
ISBN 9814458481

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This book introduces some advanced topics in probability theories — both pure and applied — is divided into two parts. The first part deals with the analysis of stochastic dynamical systems, in terms of Gaussian processes, white noise theory, and diffusion processes. The second part of the book discusses some up-to-date applications of optimization theories, martingale measure theories, reliability theories, stochastic filtering theories and stochastic algorithms towards mathematical finance issues such as option pricing and hedging, bond market analysis, volatility studies and asset trading modeling.

Stochastic Analysis for Finance with Simulations

Stochastic Analysis for Finance with Simulations
Title Stochastic Analysis for Finance with Simulations PDF eBook
Author Geon Ho Choe
Publisher Springer
Pages 660
Release 2016-07-14
Genre Mathematics
ISBN 3319255894

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This book is an introduction to stochastic analysis and quantitative finance; it includes both theoretical and computational methods. Topics covered are stochastic calculus, option pricing, optimal portfolio investment, and interest rate models. Also included are simulations of stochastic phenomena, numerical solutions of the Black–Scholes–Merton equation, Monte Carlo methods, and time series. Basic measure theory is used as a tool to describe probabilistic phenomena. The level of familiarity with computer programming is kept to a minimum. To make the book accessible to a wider audience, some background mathematical facts are included in the first part of the book and also in the appendices. This work attempts to bridge the gap between mathematics and finance by using diagrams, graphs and simulations in addition to rigorous theoretical exposition. Simulations are not only used as the computational method in quantitative finance, but they can also facilitate an intuitive and deeper understanding of theoretical concepts. Stochastic Analysis for Finance with Simulations is designed for readers who want to have a deeper understanding of the delicate theory of quantitative finance by doing computer simulations in addition to theoretical study. It will particularly appeal to advanced undergraduate and graduate students in mathematics and business, but not excluding practitioners in finance industry.