Research and Markets: Market Risk Modelling, 2012 2nd Edition: Applied Statistical Methods for Practitioners

DUBLIN--()--Research and Markets (http://www.researchandmarkets.com/research/3gmjwz/market_risk) has announced the addition of the "Market Risk Modelling, 2nd Edition: Applied Statistical Methods for Practitioners" book to their offering.

This fully updated and revised second edition of Market Risk Modelling expands to incorporate the vast developments in the risk management landscape since the first edition, both in terms of advances in statistical techniques and their application. With new material focusing on key topics such as tail risk modelling and stochastic forecasting, Market Risk Modelling describes easily implementable tools and approaches for use by the time-starved risk manager.

The second edition of Market Risk Modelling examines the latest developments and updates in statistical methods used to solve the day-to-day problems faced by a risk manager. After almost a decade since the publication of the first edition, this book considers new risk management methodologies, approaches and packages.

Bringing together a wide variety of statistical methods and models that have proven their worth in risk management, Market Risk Modelling provides practical examples and easily implementable approaches, whereby readers can integrate the underlying quantitative concepts into their pre-existing risk management systems.

Written by market risk expert, Nigel Da Costa Lewis, this second edition gives concise and applied explanations of approaches to market risk modelling, demonstrated using relevant, applicable examples. Designed for the time-starved risk manager as both a working manual and a compact reference guide, this book provides rapid and succinct access to what can be an intimidating and complex subject.

The value of market risk statistical analysis in resource and performance evaluation and setting trading limits is long-established. Statistical methods provide an objective assessment of the risks facing a financial institution and, as importantly, offer their potential clients a fully transparent risk profile of products and services. Market Risk Modelling, Second Edition covers the topics key to risk modelling and management, such as EVT, principle components and fitting probability distributions.

A quickly digestible reference to this rapidly evolving field, Market Risk Modelling, Second Edition is a must read for all risk management professionals and quants who need practical and applicable insight into this vitally important subject.

Key Topics Covered:

1 Risk Modelling and its Myths

2 Mastering the R Statistical Package

  • Getting Started in R
  • How to Create and Manipulate Objects
  • Managing your R Workspace
  • Writing Functions in a Nutshell
  • Graphical Output
  • Programming in the R Language

3 Key Concepts on Probability

  • The Basics of Random Variables
  • Risk Factors, Instruments, Random Variables and Mapping
  • Probability
  • Probability Mass Function and Probability Density Function
  • Cumulative Distribution Function
  • Percentiles and Percentile Function
  • Bivariate Joint and Marginal Distribution Functions
  • Multivariate Joint and Marginal Distribution Functions
  • Expectation
  • Conditional Expectation
  • Variance and Standard Deviation
  • Covariance and Correlation
  • Six Useful Rules For Correlation, Variance and Covariance
  • A Note on Populations and Samples
  • Relevance Of Probability, Random Variables and Expectation

4 Tools for Describing Risk Factors and Portfolios

  • Calculating Risk Factor Returns
  • Measures of Central Tendency
  • Measures of Dispersion
  • Measures of Shape

5 The Essentials of Hypothesis Testing for Risk Managers

  • The Basics: Normal Distribution
  • Central Limit Theorem
  • Hypothesis Testing

6 Alternative Methods to Measure Correlation

  • Popular Metrics for Measuring Correlation
  • Hypothesis Testing and Confidence Intervals
  • Other Useful Types of Correlation Coefficient

7 A Primer on Maximum Likelihood Estimation

  • The Likelihood Equation
  • The Score Vector
  • The Information Matrix
  • Newton-Raphson Method
  • Linear Regression

8 Regression in a Nutshell

  • Parameter Estimation
  • Assessing the Simple Linear Regression Model
  • R-Squared and the Regression Model
  • Assumptions of the Linear Regression Model
  • Multiple Regression

9 Fitting Probability Distributions to Data

  • Understanding Probability Distributions
  • Library Of Probability Distributions

10 Practical Principal Component Analysis

  • Procedure for Principal Component Analysis
  • Numerical Estimation of Principal Components
  • Principal Component Analysis in Market Risk Management
  • Scenario Analysis

11 Three Essential Models for Volatility

  • Mastering Volatility
  • Moving Average Model
  • The GARCH(1,1) Model
  • Exponentially Weighted Moving Average

12 Random Numbers and Applied Simulation

  • Random Number Generation
  • Generating Fat-Tailed Random Variables
  • Historical Simulation and Monte Carlo Simulation
  • Monte Carlo Simulation
  • Case Study: The Role of Gold in Lifecycle Retirement Wealth Accumulation

13 Tail Risk Modelling

  • Value-at-Risk Modelling
  • Calculating VaR
  • Other Models for Calculating VaR
  • Extreme Value Theory

14 Conclusion

For more information visit http://www.researchandmarkets.com/research/3gmjwz/market_risk

Contacts

Research and Markets
Laura Wood, Senior Manager.
press@researchandmarkets.com
U.S. Fax: 646-607-1907
Fax (outside U.S.): +353-1-481-1716
Sector: Banking and Financial Services

Contacts

Research and Markets
Laura Wood, Senior Manager.
press@researchandmarkets.com
U.S. Fax: 646-607-1907
Fax (outside U.S.): +353-1-481-1716
Sector: Banking and Financial Services