Description
Efnisyfirlit
- Title
- Copyright
- Dedication
- Contents
- Preface
- I An Introduction to Quantitative Risk Management
- 1 Risk in Perspective
- 1.1 Risk
- 1.1.1 Risk and Randomness
- 1.1.2 Financial Risk
- 1.1.3 Measurement and Management
- 1.2 A Brief History of Risk Management
- 1.2.1 From Babylon to Wall Street
- 1.2.2 The Road to Regulation
- 1.3 The Regulatory Framework
- 1.3.1 The Basel Framework
- 1.3.2 The Solvency II Framework
- 1.3.3 Criticism of Regulatory Frameworks
- 1.4 Why Manage Financial Risk?
- 1.4.1 A Societal View
- 1.4.2 The Shareholder’s View
- 1.5 Quantitative Risk Management
- 1.5.1 The Q in QRM
- 1.5.2 The Nature of the Challenge
- 1.5.3 QRM Beyond Finance
- 2 Basic Concepts in Risk Management
- 2.1 Risk Management for a Financial Firm
- 2.1.1 Assets, Liabilities and the Balance Sheet
- 2.1.2 Risks Faced by a Financial Firm
- 2.1.3 Capital
- 2.2 Modelling Value and Value Change
- 2.2.1 Mapping Risks
- 2.2.2 Valuation Methods
- 2.2.3 Loss Distributions
- 2.3 Risk Measurement
- 2.3.1 Approaches to Risk Measurement
- 2.3.2 Value-at-Risk
- 2.3.3 VaR in Risk Capital Calculations
- 2.3.4 Other Risk Measures Based on Loss Distributions
- 2.3.5 Coherent and Convex Risk Measures
- 3 Empirical Properties of Financial Data
- 3.1 Stylized Facts of Financial Return Series
- 3.1.1 Volatility Clustering
- 3.1.2 Non-normality and Heavy Tails
- 3.1.3 Longer-Interval Return Series
- 3.2 Multivariate Stylized Facts
- 3.2.1 Correlation between Series
- 3.2.2 Tail Dependence
- II Methodology
- 4 Financial Time Series
- 4.1 Fundamentals of Time Series Analysis
- 4.1.1 Basic Definitions
- 4.1.2 ARMA Processes
- 4.1.3 Analysis in the Time Domain
- 4.1.4 Statistical Analysis of Time Series
- 4.1.5 Prediction
- 4.2 GARCH Models for Changing Volatility
- 4.2.1 ARCH Processes
- 4.2.2 GARCH Processes
- 4.2.3 Simple Extensions of the GARCH Model
- 4.2.4 Fitting GARCH Models to Data
- 4.2.5 Volatility Forecasting and Risk Measure Estimation
- 5 Extreme Value Theory
- 5.1 Maxima
- 5.1.1 Generalized Extreme Value Distribution
- 5.1.2 Maximum Domains of Attraction
- 5.1.3 Maxima of Strictly Stationary Time Series
- 5.1.4 The Block Maxima Method
- 5.2 Threshold Exceedances
- 5.2.1 Generalized Pareto Distribution
- 5.2.2 Modelling Excess Losses
- 5.2.3 Modelling Tails and Measures of Tail Risk
- 5.2.4 The Hill Method
- 5.2.5 Simulation Study of EVT Quantile Estimators
- 5.2.6 Conditional EVT for Financial Time Series
- 5.3 Point Process Models
- 5.3.1 Threshold Exceedances for Strict White Noise
- 5.3.2 The POT Model
- 6 Multivariate Models
- 6.1 Basics of Multivariate Modelling
- 6.1.1 Random Vectors and Their Distributions
- 6.1.2 Standard Estimators of Covariance and Correlation
- 6.1.3 The Multivariate Normal Distribution
- 6.1.4 Testing Multivariate Normality
- 6.2 Normal Mixture Distributions
- 6.2.1 Normal Variance Mixtures
- 6.2.2 Normal Mean–Variance Mixtures
- 6.2.3 Generalized Hyperbolic Distributions
- 6.2.4 Empirical Examples
- 6.3 Spherical and Elliptical Distributions
- 6.3.1 Spherical Distributions
- 6.3.2 Elliptical Distributions
- 6.3.3 Properties of Elliptical Distributions
- 6.3.4 Estimating Dispersion and Correlation
- 6.4 Dimension-Reduction Techniques
- 6.4.1 Factor Models
- 6.4.2 Statistical Estimation Strategies
- 6.4.3 Estimating Macroeconomic Factor Models
- 6.4.4 Estimating Fundamental Factor Models
- 6.4.5 Principal Component Analysis
- 7 Copulas and Dependence
- 7.1 Copulas
- 7.1.1 Basic Properties
- 7.1.2 Examples of Copulas
- 7.1.3 Meta Distributions
- 7.1.4 Simulation of Copulas and Meta Distributions
- 7.1.5 Further Properties of Copulas
- 7.2 Dependence Concepts and Measures
- 7.2.1 Perfect Dependence
- 7.2.2 Linear Correlation
- 7.2.3 Rank Correlation
- 7.2.4 Coefficients of Tail Dependence
- 7.3 Normal Mixture Copulas
- 7.3.1 Tail Dependence
- 7.3.2 Rank Correlations
- 7.3.3 Skewed Normal Mixture Copulas
- 7.3.4 Grouped Normal Mixture Copulas
- 7.4 Archimedean Copulas
- 7.4.1 Bivariate Archimedean Copulas
- 7.4.2 Multivariate Archimedean Copulas
- 7.5 Fitting Copulas to Data
- 7.5.1 Method-of-Moments Using Rank Correlation
- 7.5.2 Forming a Pseudo-sample from the Copula
- 7.5.3 Maximum Likelihood Estimation
- 8 Aggregate Risk
- 8.1 Coherent and Convex Risk Measures
- 8.1.1 Risk Measures and Acceptance Sets
- 8.1.2 Dual Representation of Convex Measures of Risk
- 8.1.3 Examples of Dual Representations
- 8.2 Law-Invariant Coherent Risk Measures
- 8.2.1 Distortion Risk Measures
- 8.2.2 The Expectile Risk Measure
- 8.3 Risk Measures for Linear Portfolios
- 8.3.1 Coherent Risk Measures as Stress Tests
- 8.3.2 Elliptically Distributed Risk Factors
- 8.3.3 Other Risk Factor Distributions
- 8.4 Risk Aggregation
- 8.4.1 Aggregation Based on Loss Distributions
- 8.4.2 Aggregation Based on Stressing Risk Factors
- 8.4.3 Modular versus Fully Integrated Aggregation Approaches
- 8.4.4 Risk Aggregation and Fréchet Problems
- 8.5 Capital Allocation
- 8.5.1 The Allocation Problem
- 8.5.2 The Euler Principle and Examples
- 8.5.3 Economic Properties of the Euler Principle
- III Applications
- 9 Market Risk
- 9.1 Risk Factors and Mapping
- 9.1.1 The Loss Operator
- 9.1.2 Delta and Delta–Gamma Approximations
- 9.1.3 Mapping Bond Portfolios
- 9.1.4 Factor Models for Bond Portfolios
- 9.2 Market Risk Measurement
- 9.2.1 Conditional and Unconditional Loss Distributions
- 9.2.2 Variance–Covariance Method
- 9.2.3 Historical Simulation
- 9.2.4 Dynamic Historical Simulation
- 9.2.5 Monte Carlo
- 9.2.6 Estimating Risk Measures
- 9.2.7 Losses over Several Periods and Scaling
- 9.3 Backtesting
- 9.3.1 Violation-Based Tests for VaR
- 9.3.2 Violation-Based Tests for Expected Shortfall
- 9.3.3 Elicitability and Comparison of Risk Measure Estimates
- 9.3.4 Empirical Comparison of Methods Using Backtesting Concepts
- 9.3.5 Backtesting the Predictive Distribution
- 10 Credit Risk
- 10.1 Credit-Risky Instruments
- 10.1.1 Loans
- 10.1.2 Bonds
- 10.1.3 Derivative Contracts Subject to Counterparty Risk
- 10.1.4 Credit Default Swaps and Related Credit Derivatives
- 10.1.5 PD, LGD and EAD
- 10.2 Measuring Credit Quality
- 10.2.1 Credit Rating Migration
- 10.2.2 Rating Transitions as a Markov Chain
- 10.3 Structural Models of Default
- 10.3.1 The Merton Model
- 10.3.2 Pricing in Merton’s Model
- 10.3.3 Structural Models in Practice: EDF and DD
- 10.3.4 Credit-Migration Models Revisited
- 10.4 Bond and CDS Pricing in Hazard Rate Models
- 10.4.1 Hazard Rate Models
- 10.4.2 Risk-Neutral Pricing Revisited
- 10.4.3 Bond Pricing
- 10.4.4 CDS Pricing
- 10.4.5 P versus Q: Empirical Results
- 10.5 Pricing with Stochastic Hazard Rates
- 10.5.1 Doubly Stochastic Random Times
- 10.5.2 Pricing Formulas
- 10.5.3 Applications
- 10.6 Affine Models
- 10.6.1 Basic Results
- 10.6.2 The CIR Square-Root Diffusion
- 10.6.3 Extensions
- 11 Portfolio Credit Risk Management
- 11.1 Threshold Models
- 11.1.1 Notation for One-Period Portfolio Models
- 11.1.2 Threshold Models and Copulas
- 11.1.3 Gaussian Threshold Models
- 11.1.4 Models Based on Alternative Copulas
- 11.1.5 Model Risk Issues
- 11.2 Mixture Models
- 11.2.1 Bernoulli Mixture Models
- 11.2.2 One-Factor Bernoulli Mixture Models
- 11.2.3 Recovery Risk in Mixture Models
- 11.2.4 Threshold Models as Mixture Models
- 11.2.5 Poisson Mixture Models and CreditRisk^+
- 11.3 Asymptotics for Large Portfolios
- 11.3.1 Exchangeable Models
- 11.3.2 General Results
- 11.3.3 The Basel IRB Formula
- 11.4 Monte Carlo Methods
- 11.4.1 Basics of Importance Sampling
- 11.4.2 Application to Bernoulli Mixture Models
- 11.5 Statistical Inference in Portfolio Credit Models
- 11.5.1 Factor Modelling in Industry Threshold Models
- 11.5.2 Estimation of Bernoulli Mixture Models
- 11.5.3 Mixture Models as GLMMs
- 11.5.4 A One-Factor Model with Rating Effect
- 12 Portfolio Credit Derivatives
- 12.1 Credit Portfolio Products
- 12.1.1 Collateralized Debt Obligations
- 12.1.2 Credit Indices and Index Derivatives
- 12.1.3 Basic Pricing Relationships for Index Swaps and CDOs
- 12.2 Copula Models
- 12.2.1 Definition and Properties
- 12.2.2 Examples
- 12.3 Pricing of Index Derivatives in Factor Copula Models
- 12.3.1 Analytics
- 12.3.2 Correlation Skews
- 12.3.3 The Implied Copula Approach
- 13 Operational Risk and Insurance Analytics
- 13.1 Operational Risk in Perspective
- 13.1.1 An Important Risk Class
- 13.1.2 The Elementary Approaches
- 13.1.3 Advanced Measurement Approaches
- 13.1.4 Operational Loss Data
- 13.2 Elements of Insurance Analytics
- 13.2.1 The Case for Actuarial Methodology
- 13.2.2 The Total Loss Amount
- 13.2.3 Approximations and Panjer Recursion
- 13.2.4 Poisson Mixtures
- 13.2.5 Tails of Aggregate Loss Distributions
- 13.2.6 The Homogeneous Poisson Process
- 13.2.7 Processes Related to the Poisson Process
- IV Special Topics
- 14 Multivariate Time Series
- 14.1 Fundamentals of Multivariate Time Series
- 14.1.1 Basic Definitions
- 14.1.2 Analysis in the Time Domain
- 14.1.3 Multivariate ARMA Processes
- 14.2 Multivariate GARCH Processes
- 14.2.1 General Structure of Models
- 14.2.2 Models for Conditional Correlation
- 14.2.3 Models for Conditional Covariance
- 14.2.4 Fitting Multivariate GARCH Models
- 14.2.5 Dimension Reduction in MGARCH
- 14.2.6 MGARCH and Conditional Risk Measurement
- 15 Advanced Topics in Multivariate Modelling
- 15.1 Normal Mixture and Elliptical Distributions
- 15.1.1 Estimation of Generalized Hyperbolic Distributions
- 15.1.2 Testing for Elliptical Symmetry
- 15.2 Advanced Archimedean Copula Models
- 15.2.1 Characterization of Archimedean Copulas
- 15.2.2 Non-exchangeable Archimedean Copulas
- 16 Advanced Topics in Extreme Value Theory
- 16.1 Tails of Specific Models
- 16.1.1 Domain of Attraction of the Fréchet Distribution
- 16.1.2 Domain of Attraction of the Gumbel Distribution
- 16.1.3 Mixture Models
- 16.2 Self-exciting Models for Extremes
- 16.2.1 Self-exciting Processes
- 16.2.2 A Self-exciting POT Model
- 16.3 Multivariate Maxima
- 16.3.1 Multivariate Extreme Value Copulas
- 16.3.2 Copulas for Multivariate Minima
- 16.3.3 Copula Domains of Attraction
- 16.3.4 Modelling Multivariate Block Maxima
- 16.4 Multivariate Threshold Exceedances
- 16.4.1 Threshold Models Using EV Copulas
- 16.4.2 Fitting a Multivariate Tail Model
- 16.4.3 Threshold Copulas and Their Limits
- 17 Dynamic Portfolio Credit Risk Models and Counterparty Risk
- 17.1 Dynamic Portfolio Credit Risk Models
- 17.1.1 Why Dynamic Models of Portfolio Credit Risk?
- 17.1.2 Classes of Reduced-Form Models of Portfolio Credit Risk
- 17.2 Counterparty Credit Risk Management
- 17.2.1 Uncollateralized Value Adjustments for a CDS
- 17.2.2 Collateralized Value Adjustments for a CDS
- 17.3 Conditionally Independent Default Times
- 17.3.1 Definition and Mathematical Properties
- 17.3.2 Examples and Applications
- 17.3.3 Credit Value Adjustments
- 17.4 Credit Risk Models with Incomplete Information
- 17.4.1 Credit Risk and Incomplete Information
- 17.4.2 Pure Default Information
- 17.4.3 Additional Information
- 17.4.4 Collateralized Credit Value Adjustments and Contagion Effects
- Appendix
- A.1 Miscellaneous Definitions and Results
- A.1.1 Type of Distribution
- A.1.2 Generalized Inverses and Quantiles
- A.1.3 Distributional Transform
- A.1.4 Karamata’s Theorem
- A.1.5 Supporting and Separating Hyperplane Theorems
- A.2 Probability Distributions
- A.2.1 Beta
- A.2.2 Exponential
- A.2.3 F
- A.2.4 Gamma
- A.2.5 Generalized Inverse Gaussian
- A.2.6 Inverse Gamma
- A.2.7 Negative Binomial
- A.2.8 Pareto
- A.2.9 Stable
- A.3 Likelihood Inference
- A.3.1 Maximum Likelihood Estimators
- A.3.2 Asymptotic Results: Scalar Parameter
- A.3.3 Asymptotic Results: Vector of Parameters
- A.3.4 Wald Test and Confidence Intervals
- A.3.5 Likelihood Ratio Test and Confidence Intervals
- A.3.6 Akaike Information Criterion
- References
- Index
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