1st Edition

Quantitative Operational Risk Models




ISBN 9781439895924
Published February 15, 2012 by Chapman and Hall/CRC
236 Pages - 62 B/W Illustrations

USD $115.00

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Book Description

Using real-life examples from the banking and insurance industries, Quantitative Operational Risk Models details how internal data can be improved based on external information of various kinds. Using a simple and intuitive methodology based on classical transformation methods, the book includes real-life examples of the combination of internal data and external information.

A guideline for practitioners, the book begins with the basics of managing operational risk data to more sophisticated and recent tools needed to quantify the capital requirements imposed by operational risk. The book then covers statistical theory prerequisites, and explains how to implement the new density estimation methods for analyzing the loss distribution in operational risk for banks and insurance companies. In addition, it provides:

  • Simple, intuitive, and general methods to improve on internal operational risk assessment
  • Univariate event loss severity distributions analyzed using semiparametric models
  • Methods for the introduction of underreporting information
  • A practical method to combine internal and external operational risk data, including guided examples in SAS and R

Measuring operational risk requires the knowledge of the quantitative tools and the comprehension of insurance activities in a very broad sense, both technical and commercial. Presenting a nonparametric approach to modeling operational risk data, Quantitative Operational Risk Models offers a practical perspective that combines statistical analysis and management orientations.

Table of Contents

Understanding Operational Risk
Introduction
Our Approach to Operational Risk Quantification
Regulatory Framework
The Fundamentals of Calculating Operational Risk Capital
Notation and Definitions
The Calculation of Operational Risk Capital in Practice
Organization of the Book

Operational Risk Data and Parametric Models
Introduction
Internal Data and External Data
Basic Parametric Severity Distributions
The Generalized Champernowne Distribution
Quantile Estimation
Further Reading and Bibliographic Notes

Semiparametric Model for Operational Risk Severities
Introduction
Classical Kernel Density Estimation
Transformation Method
Bandwidth Selection
Boundary Correction
Transformation with the Generalized Champernowne Distributions
Results for the Operational Risk Data
Further Reading and Bibliographic Notes

Combining Operational Risk Data Sources
Why Mixing?
Combining Data Sources with the Transformation Method
The Mixing Transformation Technique

Data Study
Further Reading and Bibliographic Notes

Underreporting
Introduction
The Underreporting Function
Publicly Reported Loss Data
Semiparametric Approach to Correction tor Underreporting
An Application to Evaluate Operational Risk with Correction
An Application to Evaluate Internal Operational Risk
Further Reading and Bibliographic Notes

Combining Underreported Internal and External Data
Introduction
Data Availability
Underreporting Losses
A Mixing Model in a Truncation Framework
Operational Risk Application
Further Reading and Bibliographic Notes

A Guided Practical Example
Introduction
Descriptive Statistics and Basic Procedures
Transformation Kernel Estimation
Combining Internal and External Data
Underreporting Implementation
Programming in R

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Author(s)

Biography

Catalina Bolance has been Associate Professor of Quantitative Methods for Economics and Management Science of the Department of Econometrics at University of Barcelona since 2001. She received a PhD in Economics, an M.A. in Marketing, and a B.Sc. in Statistics at the University of Barcelona. She is currently member of the research group Risk in Finance and Insurance and is a specialist in applied nonparametric methods. She has coauthored several undergraduate books on applied statistics that are widely used in Spanish universities and has also published in high-quality scientific journals like Insurance: Mathematics and Economics, Statistics, and Astin Bulletin—The Journal of the International Actuarial Association, the journal of the International Actuarial Association. She has supervised many Master’s and Ph.D. theses with an outstanding tutoring record. Since 2010 she has participated in a project of the London School of Economics on long-term care insurance sponsored by the AXA research fund. In 2004 she received the insurance international prize awarded by MAPFRE.

Montserrat Guillen
has been Chair Professor of Quantitative Methods at the University of Barcelona since 2001 and director of the research group on Risk in Finance and Insurance. She received an M.S. degree in Mathematics and Mathematical Statistics in 1987, and a Ph.D. degree in Economics from the University of Barcelona in 1992. She also received theM.A. degree in Data Analysis from the University of Essex, United Kingdom. She was Visiting Research faculty at the University of Texas at Austin (USA) in 1994. She holds a visiting professor position at the University of Paris II, where she teaches Insurance Econometrics. Her research focuses on actuarial statistics and quantitative risk management. Since 2005 she has been an associate editor for the Journal of Risk and Insurance, the official journal of the American Risk and Insurance Association, a senior editor of Astin Bulletin—The Journal of the International Actuarial Association, the journal of the International Actuarial Association since 2009, and chief editor of SORT—Statistics and Operations Research Transactions since 2006. She was elected Vice President of the European Group of Risk and Insurance Economists at the World Congress of Risk and Insurance Economics in 2010.

Jim Gustafsson
has been Head of Nordic Quantitative Advisory Services at Ernst & Young since 2011. He has 10 years of business experience in the insurance and consultancy sector, where he was an employee for several years in the insurance Group RSA with positions such as Actuary, Operational Risk Specialist, Head of Research, and Enterprise Risk Control Director. He received a B.Sc. in Mathematical Statistics in 2004, an M.Sc. in Mathematics in 2005 from Lund University, and a Ph.D. degree in Actuarial Science from the University of Copenhagen in 2009. He is author of over a dozen published articles on actuarial statistics and operational risk quantification, and was awarded for the "Best academic Paper" by the Operational Risk and Compliance Magazine in 2007. He was recognized as a "Top 50" Face of Operational Risk by Operational Risk and ComplianceMagazine in 2009; this award acknowledges the contribution that the recipient has made, and continues to make, to the discipline of operational risk. He is a sought-after speaker in Risk Management and Actuarial conferences and a member of the Editorial Board for the international journal Insurance Markets and Companies: Analyses and Actuarial Computations.

Jens Perch Nielsen
has been Professor of Actuarial Statistics at Cass Business School in London and CEO of the Denmark based knowledge company Festina Lente. He has a history of combining high academic standards with the immediate practical needs of the insurance industry. Through his company he has managed projects on operational risk, reserving, capital allocation, and risk-adjusted cross-selling methods in non-life-insurance, and he has academic publications in all these areas. In life and pension insurance he has conducted professional work on product development, asset allocation, longevity models and econometric projections and on bread and butter type actuarial day-to-day work. His Ph.D. from UC-Berkeley was in Biostatistics and he is still working on his original topic of general nonparametric smoothing techniques in regression, density and hazard estimation.

Reviews

"… a very useful addition to the literature on Operational Financial Risk and I would recommend it to practitioners."
—Alan Penman, Annals of Actuarial Science, Vol. 7, March 2013