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Derivatives analytics with Python : data analysis, models, simulation, calibration and hedging / Yves Hilpisch.
- Format:
- Book
- Author/Creator:
- Hilpisch, Yves J., author.
- Series:
- Wiley finance series
- Wiley Finance Series
- Language:
- English
- Subjects (All):
- Derivative securities.
- Hedging (Finance).
- Python (Computer program language).
- Genre:
- Electronic books.
- Physical Description:
- 1 online resource (377 pages): illustrations, graphs, tables.
- Place of Publication:
- Chichester, England : Wiley, 2015.
- System Details:
- text file
- Contents:
- Chapter 1 A Quick Tour 1
- 1.1 Market-Based Valuation 1
- 1.2 Structure of the Book 2
- 1.3 Why Python? 3
- 1.4 Further Reading 4
- Part 1 The Market
- Chapter 2 What is Market-Based Valuation? 9
- 2.1 Options and their Value 9
- 2.2 Vanilla vs. Exotic Instruments 13
- 2.3 Risks Affecting Equity Derivatives 14
- 2.3.1 Market Risks 14
- 2.3.2 Other Risks 15
- 2.4 Hedging 16
- 2.5 Market-Based Valuation as a Process 17
- Chapter 3 Market Stylized Facts 19
- 3.1 Introduction 19
- 3.2 Volatility, Correlation and Co. 19
- 3.3 Normal Returns as the Benchmark Case 21
- 3.4 Indices and Stocks 25
- 3.4.1 Stylized Facts 25
- 3.4.2 DAX Index Returns 26
- 3.5 Option Markets 30
- 3.5.1 Bid/Ask Spreads 31
- 3.5.2 Implied Volatility Surface 31
- 3.6 Short Rates 33
- 3.7 Conclusions 36
- 3.8 Python Scripts 37
- 3.8.1 GBM Analysis 37
- 3.8.2 DAX Analysis 40
- 3.8.3 BSM Implied Volatilities 41
- 3.8.4 EURO STOXX 50 Implied Volatilities 43
- 3.8.5 Euribor Analysis 45
- Part 2 Theoretical Valuation
- Chapter 4 Risk-Natural Valuation 48
- 4.1 Introduction 49
- 4.2 Discrete-Time Uncertainty 50
- 4.3 Discrete Market Model 54
- 4.3.1 Primitives 54
- 4.3.2 Basic Definitions 55
- 4.4 Central Results in Discrete Time 57
- 4.5 Continuous-Time Case 61
- 4.6 Conclusions 66
- 4.7 Proofs 66
- 4.7.1 Proof of Lemma 1 66
- 4.7.2 Proof of Proposition 1 67
- 4.7.3 Proof of Theorem 1 68
- Chapter 5 Complete Market Models 71
- 5.1 Introduction 71
- 5.2 Black-Scholes-Merton Model 72
- 5.2.1 Market Model 72
- 5.2.2 The Fundamental PDE 72
- 5.2.3 European Options 74
- 5.3 Greeks in the BSM Model 76
- 5.4 Cox-Ross-Rubinstein Model 81
- 5.5 Conclustions 84
- 5.6 Proofs and Python Scripts 84
- 5.6.1 Itô's Lemma 84
- 5.6.2 Script for BSM Option Valuation 85
- 5.6.3 Script for BSM Call Greeks 88
- 5.6.4 Script for CRR Option Valuation 92
- Chapter 6 Fourier-Based Option Pricing 95
- 6.1 Introduction 95
- 6.2 The Pricing Problem 96
- 6.3 Fourier Transforms 97
- 6.4 Fourier-Based Option Pricing 98
- 6.4.1 Lewis (2001) Approach 98
- 6.4.2 Carr-Madan (1999) Approach 101
- 6.5 Numerical Evaluation 103
- 6.5.1 Fourier Series 103
- 6.5.2 Fast Fourier Transform 105
- 6.6 Applications 107
- 6.6.1 Black-Scholes-Merton (1973) Model 107
- 6.6.2 Merton (1976) Model 108
- 6.6.3 Discrete Market Model 110
- 6.7 Conclusions 114
- 6.8 Python Scripts 114
- 6.8.1 BSM Call Valuation via Fourier Approach 114
- 6.8.2 Fourier Series 119
- 6.8.3 Roots of Unity 120
- 6.8.4 Convolution 121
- 6.8.5 Module with Parameters 122
- 6.8.6 Call Value by Convolution 123
- 6.8.7 Option Pricing by Convolution 123
- 6.8.8 Option Pricing by DPT 124
- 6.8.9 Speed Test of DFT 125
- Chapter 7 Valuation of American Options by Simulation 127
- 7.1 Introduction 127
- 7.2 Financial Model 128
- 7.3 American Option Valuation 128
- 7.3.1 Problem Formulations 128
- 7.3.2 Valuation Algorithms 130
- 7.4 Numerical Results 132
- 7.4.1 American Put Option 132
- 7.4.2 American Short Condor Spread 135
- 7.5 Conclusions 136
- 7.6 Python Scripts 137
- 7.6.1 Binomial Valuation 137
- 7.6.2 Monte Carlo Valuation with LSM 139
- 7.6.3 Primal and Dual LSM Algorithms 140
- Part 3 Market-Based Valuation
- Chapter 8 A First Example of Market-Based Valuation 147
- 8.1 Introduction 147
- 8.2 Market Model 147
- 8.3 Valuation 148
- 8.4 Calibration 149
- 8.5 Simulation 149
- 8.6 Conclusions 155
- 8.7 Python Scripts 155
- 8.7.1 Valuation by Numerical Integration 155
- 8.7.2 Valuation by FFT 157
- 8.7.3 Calibration to Three Maturities 160
- 8.7.4 Calibration to Short Maturity 163
- 8.7.5 Valuation by MCS 165
- Chapter 9 General Model Framework 169
- 9.1 Introduction 169
- 9.2 The Framework 169
- 9.3 Features of the Framework 170
- 9.4 Zero-Coupon Bond Valuation 172
- 9.5 European Option Valuation 173
- 9.5.1 PDE Approach 173
- 9.5.2 Transform Methods 175
- 9.5.3 Monte Carlo Simulation 176
- 9.6 Conclusions 177
- 9.7 Proofs and Python Scripts 177
- 9.7.1 Ito's Lemma 177
- 9.7.2 Python Script for Bond Valuation 178
- 9.7.3 Python Script for European Call Valuation 180
- Chapter 10 Monte Carlo Simulation 187
- 10.1 Introduction 187
- 10.2 Valuation of Zero-Coupon Bonds 188
- 10.3 Valuation of European Options 192
- 10.4 Valuation of American Options 196
- 10.4.1 Numerical Results 198
- 10.4.2 Higher Accuracy vs. Lower Speed 201
- 10.5 Conclusions 203
- 10.6 Python Scripts 204
- 10.6.1 General Zero-Coupon Bond Valuation 204
- 10.6.2 CIR85 Simulation and Valuation 205
- 10.6.3 Automated Valuation of European Options by Monte Carlo Simulation 209
- 10.6.4 Automated Valuation of American Put Options by Monte Carlo Simulation 215
- Chapter 11 Model Calibration 223
- 11.1 Introduction 223
- 11.2 General Considerations 223
- 11.2.1 my Calibration at All? 224
- 11.2.2 Which Role Do Different Model Components Play? 226
- 11.2.3 What Objective Function? 227
- 11.2.4 What Market Data? 228
- 11.2.5 What Optimization Algorithm? 229
- 11.3 Calibration of Short Rate Component 230
- 11.3.1 Theoretical Foundations 230
- 11.3.2 Calibration to Euribor Rates 231
- 11.4 Calibration of Equity Component 233
- 11.4.1 Valuation via Fourier Transform Method 235
- 11.4.2 Calibration to EURO STOXX 50 Option Quotes 236
- 11.4.3 Calibration of H93 Model 236
- 11.4.4 Calibration of Jump Component 237
- 11.4.5 Complete Calibration of BCC97 Model 239
- 11.4.6 Calibration to Implied Volatilities 240
- 11.5 Conclusions 243
- 11.6 Python Scripts for Cox-Ingersoll-Ross Model 243
- 11.6.1 Calibration of CIR85 243
- 11.6.2 Calibration of H93 Stochastic Volatility Model 248
- 11.6.3 Comparison of Implied Volatilities 251
- 11.6.4 Calibration of Jump-Diffusion Part of BCC97 252
- 11.6.5 Calibration of Complete Model of BCC97 256
- 11.6.6 Calibration of BCC97 Model to Implied Volatilities 258
- Chapter 12 Simulation and Valuation an the General Model Framework 263
- 12.1 Introduction 263
- 12.2 Simulation of BCC97 Model 263
- 12.3 Valuation of Equity Options 266
- 12.3.1 European Options 266
- 12.3.2 American Options 268
- 12.4 Conclusions 268
- 12.5 Python Scripts 269
- 12.5.1 Simulating the BCC97 Model 269
- 12.5.2 Valuation of European Call Options by MCS 274
- 12.5.3 Valuation of American Call Options by MCS 275
- Chapter 13 Dynamic Hedging 279
- 13.1 Introduction 279
- 13.2 Hedging Study for BSM Model 280
- 13.3 Hedging Study for BCC97 Model 285
- 13.4 Conclusions 289
- 13.5 Python Scripts 289
- 13.5.1 LSM Delta Hedging in BSM (Single Path) 289
- 13.5.2 LSM Delta Hedging in BSM (Multiple Paths) 293
- 13.5.3 LSM Algorithm for American Put in BCC97 295
- 13.5.4 LSM Delta Hedging in BCC97 (.Single Path) 300
- Chapter 14 Executive Summary 303.
- Notes:
- Includes bibliographical references and index.
- Description based on print version record.
- Local Notes:
- Electronic reproduction. Ann Arbor, MI : ProQuest, 2016. Available via World Wide Web. Access may be limited to ProQuest affiliated libraries.
- Other Format:
- Print version: Hilpisch, Yves J. Derivatives analytics with Python : data analysis, models, simulation, calibration and hedging.
- ISBN:
- 9781119037934
- OCLC:
- 907061131
- Access Restriction:
- Restricted for use by site license.
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