1.

Record Nr.

UNINA9910141227803321

Autore

Hubbert Simon

Titolo

Essential mathematics for market risk management / / Simon Hubbert

Pubbl/distr/stampa

Hoboken, N.J., : Wiley, 2012

ISBN

1-283-40482-6

9786613404824

1-118-37236-0

1-118-46721-3

1-119-95301-4

Edizione

[2nd ed.]

Descrizione fisica

1 online resource (354 p.)

Collana

Wiley finance

Disciplina

658.15/50151

Soggetti

Risk management - Mathematical models

Capital market - Mathematical models

Lingua di pubblicazione

Inglese

Formato

Materiale a stampa

Livello bibliografico

Monografia

Note generali

Description based upon print version of record.

Nota di bibliografia

Includes bibliographical references and index.

Nota di contenuto

Essential Mathematics for Market Risk Management; Contents; Preface; 1 Introduction; 1.1 Basic Challenges in Risk Management; 1.2 Value at Risk; 1.3 Further Challenges in Risk Management; 2 Applied Linear Algebra for Risk Managers; 2.1 Vectors and Matrices; 2.2 Matrix Algebra in Practice; 2.3 Eigenvectors and Eigenvalues; 2.4 Positive Definite Matrices; 3 Probability Theory for Risk Managers; 3.1 Univariate Theory; 3.1.1 Random variables; 3.1.2 Expectation; 3.1.3 Variance; 3.2 Multivariate Theory; 3.2.1 The joint distribution function; 3.2.2 The joint and marginal density functions

3.2.3 The notion of independence 3.2.4 The notion of conditional dependence; 3.2.5 Covariance and correlation; 3.2.6 The mean vector and covariance matrix; 3.2.7 Linear combinations of random variables; 3.3 The Normal Distribution; 4 Optimization Tools; 4.1 Background Calculus; 4.1.1 Single-variable functions; 4.1.2 Multivariable functions; 4.2 Optimizing Functions; 4.2.1 Unconstrained quadratic functions; 4.2.2 Constrained quadratic functions; 4.3 Over-determined Linear Systems; 4.4 Linear Regression; 5 Portfolio Theory I; 5.1 Measuring Returns

5.1.1 A comparison of the standard and log returns 5.2 Setting Up the



Optimal Portfolio Problem; 5.3 Solving the Optimal Portfolio Problem; 6 Portfolio Theory II; 6.1 The Two-Fund Investment Service; 6.2 A Mathematical Investigation of the Optimal Frontier; 6.2.1 The minimum variance portfolio; 6.2.2 Covariance of frontier portfolios; 6.2.3 Correlation with the minimum variance portfolio; 6.2.4 The zero-covariance portfolio; 6.3 A Geometrical Investigation of the Optimal Frontier; 6.3.1 Equation of a tangent to an efficient portfolio; 6.3.2 Locating the zero-covariance portfolio

6.4 A Further Investigation of Covariance 6.5 The Optimal Portfolio Problem Revisited; 7 The Capital Asset Pricing Model (CAPM); 7.1 Connecting the Portfolio Frontiers; 7.2 The Tangent Portfolio; 7.2.1 The market's supply of risky assets; 7.3 The CAPM; 7.4 Applications of CAPM; 7.4.1 Decomposing risk; 8 Risk Factor Modelling; 8.1 General Factor Modelling; 8.2 Theoretical Properties of the Factor Model; 8.3 Models Based on Principal Component Analysis (PCA); 8.3.1 PCA in two dimensions; 8.3.2 PCA in higher dimensions; 9 The Value at Risk Concept; 9.1 A Framework for Value at Risk

9.1.1 A motivating example 9.1.2 Defining value at risk; 9.2 Investigating Value at Risk; 9.2.1 The suitability of value at risk to capital allocation; 9.3 Tail Value at Risk; 9.4 Spectral Risk Measures; 10 Value at Risk under a Normal Distribution; 10.1 Calculation of Value at Risk; 10.2 Calculation of Marginal Value at Risk; 10.3 Calculation of Tail Value at Risk; 10.4 Sub-additivity of Normal Value at Risk; 11 Advanced Probability Theory for Risk Managers; 11.1 Moments of a Random Variable; 11.2 The Characteristic Function; 11.2.1 Dealing with the sum of several random variables

11.2.2 Dealing with a scaling of a random variable

Sommario/riassunto

"Everything you need to know in order to manage risk effectively within your organizationYou cannot afford to ignore the explosion in mathematical finance in your quest to remain competitive. This exciting branch of mathematics has very direct practical implications: when a new model is tested and implemented it can have an immediate impact on the financial environment.With risk management top of the agenda for many organizations, this book is essential reading for getting to grips with the mathematical story behind the subject of financial risk management. It will take you on a journey--from the early ideas of risk quantification up to today's sophisticated models and approaches to business risk management.To help you investigate the most up-to-date, pioneering developments in modern risk management, the book presents statistical theories and shows you how to put statistical tools into action to investigate areas such as the design of mathematical models for financial volatility or calculating the value at risk for an investment portfolio. Respected academic author Simon Hubbert is the youngest director of a financial engineering program in the U.K. He brings his industry experience to his practical approach to risk analysis Captures the essential mathematical tools needed to explore many common risk management problems Website with model simulations and source code enables you to put models of risk management into practice Plunges into the world of high-risk finance and examines the crucial relationship between the risk and the potential reward of holding a portfolio of risky financial assets This book is your one-stop-shop for effective risk management"--