<div>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 pheno
Stochastic Analysis for Finance with Simulations
✍ Scribed by Geon Ho Choe (auth.)
- Publisher
- Springer
- Year
- 2016
- Tongue
- English
- Leaves
- 660
- Series
- Universitext
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
✦ Synopsis
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.
✦ Table of Contents
Front Matter....Pages i-xxxii
Front Matter....Pages 1-1
Fundamental Concepts....Pages 3-14
Financial Derivatives....Pages 15-22
Front Matter....Pages 23-23
The Lebesgue Integral....Pages 25-40
Basic Probability Theory....Pages 41-74
Conditional Expectation....Pages 75-89
Stochastic Processes....Pages 91-107
Front Matter....Pages 109-109
Brownian Motion....Pages 111-135
Girsanov’s Theorem....Pages 137-145
The Reflection Principle of Brownian Motion....Pages 147-156
Front Matter....Pages 157-157
The Itô Integral....Pages 159-175
The Itô Formula....Pages 177-202
Stochastic Differential Equations....Pages 203-223
The Feynman–Kac Theorem....Pages 225-235
Front Matter....Pages 237-237
The Binomial Tree Method for Option Pricing....Pages 239-253
The Black–Scholes–Merton Differential Equation....Pages 255-280
The Martingale Method....Pages 281-294
Front Matter....Pages 295-295
Pricing of Vanilla Options....Pages 297-320
Pricing of Exotic Options....Pages 321-335
American Options....Pages 337-350
Front Matter....Pages 351-351
The Capital Asset Pricing Model....Pages 353-378
Front Matter....Pages 351-351
Dynamic Programming....Pages 379-393
Front Matter....Pages 395-395
Bond Pricing....Pages 397-419
Interest Rate Models....Pages 421-441
Numeraires....Pages 443-454
Front Matter....Pages 455-455
Numerical Estimation of Volatility....Pages 457-467
Time Series....Pages 469-485
Random Numbers....Pages 487-499
Numerical Solution of the Black–Scholes–Merton Equation....Pages 501-517
Numerical Solution of Stochastic Differential Equations....Pages 519-534
Back Matter....Pages 535-544
....Pages 545-657
✦ Subjects
Mathematics, general; Quantitative Finance
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