Fr. 100.00

Business Risk Management - Models and Analysis

English · Hardback

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Informationen zum Autor Edward J. Anderson The University of Sydney Business School, Australia Klappentext A comprehensive and accessible introduction to modern quantitative risk management.The business world is rife with risk and uncertainty, and risk management is a vitally important topic for managers. The best way to achieve a clear understanding of risk is to use quantitative tools and probability models. Written for students, this book has a quantitative emphasis but is accessible to those without a strong mathematical background.Business Risk Management: Models and Analysis* Discusses novel modern approaches to risk management* Introduces advanced topics in an accessible manner* Includes motivating worked examples and exercises (including selected solutions)* Is written with the student in mind, and does not assume advanced mathematics* Is suitable for self-study by the manager who wishes to better understand this important field.Aimed at postgraduate students, this book is also suitable for senior undergraduates, MBA students, and all those who have a general interest in business risk. Zusammenfassung A comprehensive and accessible introduction to modern quantitative risk management. The business world is rife with risk and uncertainty, and risk management is a vitally important topic for managers. The best way to achieve a clear understanding of risk is to use quantitative tools and probability models. Inhaltsverzeichnis Preface xiii 1 What is risk management? 1 1.1 Introduction 2 1.2 Identifying and documenting risk 5 1.3 Fallacies and traps in risk management 7 1.4 Why safety is different 9 1.5 The Basel framework 11 1.6 Hold or hedge? 12 1.7 Learning from a disaster 13 Notes 17 References 18 Exercises 19 2 The structure of risk 22 2.1 Introduction to probability and risk 23 2.2 The structure of risk 25 2.3 Portfolios and diversification 30 2.4 The impact of correlation 40 2.5 Using copulas to model multivariate distributions 49 Notes 58 References 59 Exercises 60 3 Measuring risk 63 3.1 How can we measure risk? 64 3.2 Value at risk 67 3.3 Combining and comparing risks 73 3.4 VaR in practice 76 3.5 Criticisms of VaR 79 3.6 Beyond value at risk 82 Notes 88 References 88 Exercises 89 4 Understanding the tails 92 4.1 Heavy-tailed distributions 93 4.2 Limiting distributions for the maximum 100 4.3 Excess distributions 109 4.4 Estimation using extreme value theory 115 Notes 121 References 122 Exercises 123 5 Making decisions under uncertainty 125 5.1 Decisions, states and outcomes 126 5.2 Expected Utility Theory 130 5.3 Stochastic dominance and risk profiles 148 5.4 Risk decisions for managers 156 Notes 160 References 161 Exercises 162 6 Understanding risk behavior 164 6.1 Why decision theory fails 165 6.2 Prospect Theory 172 6.3 Cumulative Prospect Theory 180 6.4 Decisions with ambiguity 189 6.5 How managers treat risk 191 Notes 194 References 194 Exercises 195 7 Stochastic optimization 198 7.1 Introduction to stochastic optimization 199 7.2 Choosing scenarios 212 7.3 Multistage stochastic optimization 218 7.4 Value at risk constraints 224 Notes 228 References 228 Exercises 229 8 Robust optimization 232 8.1 True uncertainty: Beyond probabilities 233 8.2 Avoiding disaster when there is uncertainty 234 8.3 Robust optimization and the minimax approach 250 Notes 261 References 262 Exercises 263 9 Real o...

List of contents

Preface xiii
 
1 What is risk management? 1
 
1.1 Introduction 2
 
1.2 Identifying and documenting risk 5
 
1.3 Fallacies and traps in risk management 7
 
1.4 Why safety is different 9
 
1.5 The Basel framework 11
 
1.6 Hold or hedge? 12
 
1.7 Learning from a disaster 13
 

Notes 17
 
References 18
 
Exercises 19
 
2 The structure of risk 22
 
2.1 Introduction to probability and risk 23
 
2.2 The structure of risk 25
 
2.3 Portfolios and diversification 30
 
2.4 The impact of correlation 40
 
2.5 Using copulas to model multivariate distributions 49
 
Notes 58
 
References 59
 
Exercises 60
 
3 Measuring risk 63
 
3.1 How can we measure risk? 64
 
3.2 Value at risk 67
 
3.3 Combining and comparing risks 73
 
3.4 VaR in practice 76
 
3.5 Criticisms of VaR 79
 

3.6 Beyond value at risk 82
 
Notes 88
 
References 88
 
Exercises 89
 
4 Understanding the tails 92
 
4.1 Heavy-tailed distributions 93
 
4.2 Limiting distributions for the maximum 100
 
4.3 Excess distributions 109
 
4.4 Estimation using extreme value theory 115
 
Notes 121
 
References 122
 
Exercises 123
 
5 Making decisions under uncertainty 125
 
5.1 Decisions, states and outcomes 126
 
5.2 Expected Utility Theory 130
 
5.3 Stochastic dominance and risk profiles 148
 
5.4 Risk decisions for managers 156
 
Notes 160
 
References 161
 
Exercises 162
 
6 Understanding risk behavior 164
 
6.1 Why decision theory fails 165
 
6.2 Prospect Theory 172
 
6.3 Cumulative Prospect Theory 180
 
6.4 Decisions with ambiguity 189
 
6.5 How managers treat risk 191
 
Notes 194
 
References 194
 
Exercises 195
 
7 Stochastic optimization 198
 
7.1 Introduction to stochastic optimization 199
 
7.2 Choosing scenarios 212
 
7.3 Multistage stochastic optimization 218
 
7.4 Value at risk constraints 224
 
Notes 228
 
References 228
 
Exercises 229
 
8 Robust optimization 232
 
8.1 True uncertainty: Beyond probabilities 233
 
8.2 Avoiding disaster when there is uncertainty 234
 
8.3 Robust optimization and the minimax approach 250
 
Notes 261
 
References 262
 
Exercises 263
 
9 Real options 265
 
9.1 Introduction to real options 266
 
9.2 Calculating values with real options 267
 
9.3 Combining real options and net present value 273
 
9.4 The connection with financial options 278
 
9.5 Using Monte Carlo simulation to value real options 282
 
9.6 Some potential problems with the use of real options 285
 
Notes 287
 
References 287
 
Exercises 288
 
10 Credit risk 291
 
10.1 Introduction to credit risk 292
 
10.2 Using credit scores for credit risk 294
 
10.3 Consumer credit 301
 
10.4 Logistic regression 308
 
Notes 317
 
References 318
 
Exercises 319
 
Appendix A Tutorial on probability theory 323
 
A.1 Random events 323
 
A.2 Bayes' rule and independence 326
 
A.3 Random variables 327
 
A.4 Means and variances 329
 
A.5 Combinations of random variables 332
 
A.6 The normal distribution and the Central Limit Theorem 336
 
Appendix B Answers to eve

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