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The Measurement of Market Risk: Modelling of Risk Factors, Asset Pricing, and Approximation of Portfolio Distributions PDF

262 Pages·2001·8.23 MB·English
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Lecture Notes in Economics and Mathematical Systems 504 FoundingEditors: M. Beckmann H. P. Kiinzi ManagingEditors: Prof.Dr. G. Fandel FachbereichWirtschaftswissenschaften FernuniversitätHagen Feithstr. 140/AVZII,58084Hagen,Germany Prof. Dr.W. Trockel InstitutfürMathematischeWirtschaftsforschung (IMW) UniversitätBielefeld Universitätsstr. 25, 33615Bielefeld,Germany Co-Editors: C. D.Aliprantis, DanKovenock EditorialBoard: P. Bardsley,A. Basile,M.R. Baye,T. Cason,R. Deneckere,A. Drexl, G. Feichtinger,M. Florenzano,W. Giith, K. Inderfurth,M. Kaneko, P. Korhonen, W. Kiirsten, M. LiCalzi,P. K. Monteiro,Ch. Noussair, G. Philips, U. Schittko, P. Schönfeld, R. Selten,G. Sorger,R. Steuer,F.Vega-Redondo,A. P. Villamil, M.Wooders Springer-V erlag Berlin Heidelberg GmbH Pierre-Yves Moix The Measurement of Market Risk Modelling ofRisk Factors, Asset Pricing, and Approximation ofPortfolio Distributions Springer Author Dr. Pierre-Yves Moix, CFA Untere Torfeldstrasse 52 5033 Buchs/AG Switzerland Cataloging-in-Publication data applied for Die Deutsche Bibliothek -CIP-Einheitsaufnahme Moix, Pierre-Yves: The measurement of market risk : modelling of risk factors, asset pricing, and approximation of portfolio distributions / Pierre-Yves Moix. -Berlin; Heidelberg ; New York; Barcelona; Hong Kong ; London ; Milan ; Paris; Singapore; Tokyo: Springer, 2001 (Lecture notes in economics and mathematical systems ; 504) ISBN 978-3-540-42143-6 ISBN 978-3-642-56481-9 (eBook) DOI 10.1007/978-3-642-56481-9 ISSN 0075-8450 This work is subject to copyright. AII rights are reserved, whether the whole or part of the material is concerned, specifically the rights of translation, reprinting, re-use of i lIustrations, recitation, broadcasting, reproduction on microfilms or in any other way, and storage in data banks. Duplication of this publication or parts thereof is permitted only under the provisions of the German Copyright Law of September 9, 1965, in its current version, and permis sion for use must always be obtained from Springer-Verlag. Violations are liable for prosecution under the German Copyright Law. http://www.springer.de © Springer-Verlag Berlin Heidelberg 2001 Originally published by Springer-Verlag Berlin Heidelberg New York in 2001 The use of general descriptive names, registered names, trademarks, etc. in this publication does not imply, even in the absence of a specific statement, that such names are exempt from the relevant protective laws and regulations and therefore free for general use. Typesetting: Camera ready by author/editors Cover design: design & production, Heidelberg Printed on acid-free paper SPIN: 10840038 55/3142/du 543210 To Sophie Rose, Susanne, Marie-Rose and Gerard To the memory ofmy onele Ernest Moix (1927-1999) a ((L )absence est l)amour ce qu)est au feu le vent; il eteint le petit et allume le grand)) Roger de Bussy-Rabuttin "Histoire amoureuse de GauZes" Preface This book is a revised version of my doctoral dissertation submitted to the University ofSt. Gallen in October 1999. I would like to thank Dr.oec. Marc Wildi whose careful reading ofmuch ofthe text led to many improvements. All errors remain mine. Pfiiffikon SZ, Switzerland, March 2001 Pierre-Yves Moix Preface to the dissertation "Education is man's going forward from cocksure ignorance to thoughtful uncertainty" Don Clark's Scrapbook quoted in Wonnacott and Wonnacott (1990). After several years of banking practice, I decided to give up some of my certitudes and considered this thesis project a good opportunity to study some of the quantitative tools necessary for the modelling of uncertainty. lowe very much to Prof. Dr. Karl Frauendorfer, the referee of my thesis, for the time he took to read the manuscript and for the numerous valuable suggestions he made. I am also very grateful to Prof. Dr. Klaus Spremann who kindly accepted to co-refer my thesis and who strengthened my inter est in finance during my study period. During my time at the Institute for Operations Research of the University of St. Gallen (lfU-HSG) I had the opportunity to participate in the project "RiskLab" which provides a very profitable link between finance practice and academics. I would especially like to thank Dr. Christophe Rouvinez from Credit Suisse for his comments and all the data he provided so generously. Likewise, I am very grateful to my colleagues at the institute who have been a valuable source ofnew ideas. I especially profited from Dr.oec. Christina Mahron's programming skills, from the mathematical expertise of Dipl.-Math. Veronika Halder, and from the numerous discussions with Dr.oec. Ralf Gaese, Dipl.-Math.oec. Guido Haarbriicker, and Dipl.-Wirtsch.Ing. Stefan Scholz. Many thanks to Claudia Rossi-Mayer, CELTA,whospent manydaysatcorrectingthemanuscriptand improving my modest knowledge ofEnglish. Last but not least, my warmest thanks go to my entire family for all the love and support they have given me, and above all for their patience. Contents 1. Introduction.............................................. 1 1.1 The Need for Risk Measurement. ......................... 1 1.2 The Nature of Financial Risk. ........................... 3 1.3 Formal Framework 5 1.3.1 Modelling the Uncertainty. ........................ 6 1.3.2 The Information Structure. ........................ 8 1.4 Problem Statement ..................................... 9 1.5 Structure ofthe Book. .................................. 11 1.6 Test Environment 16 1.6.1 Environment I ........................... 17 1.6.2 Environment II 18 2. Risk and Risk Measures. ................................. 21 2.1 The Investment Decision 22 2.1.1 Utility Theory and Expected Utility Hypothesis. ..... 23 2.1.2 Rules for the Ordering of Uncertain Prospects 33 2.2 The Capital Requirement Decision. ....................... 41 2.2.1 Value-at-Risk.................................... 42 2.2.2 Coherent Risk Measures. .......................... 44 2.3 Summary.............................................. 47 3. Modelling the Dynamics ofthe Risk Factors. ............. 49 3.1 Statistical Definitions. .................................. 50 3.1.1 Stochastic Processes: Basic Definitions. ............. 50 3.1.2 Properties of Stochastic Processes. ................. 52 3.1.3 Basic Stochastic Processes. ........................ 53 3.2 The Economic Assumption: the Efficient Market Hypothesis. 59 3.3 Empirical Evidence for the Returns. ...................... 62 3.3.1 Calendar Effects 62 3.3.2 Leptokurtosis and Weak Evidence of Skewness ....... 62 3.3.3 The Autocorrelation ofthe Squared Returns. ........ 64 3.4 Models for the Risk Factor Dynamics .. ................... 66 3.4.1 The Generic Model for the Log-returns. ............. 67 3.4.2 ARCH Models ................................... 68 X Contents 3.4.3 Stochastic Variance Models. ....................... 71 3.5 Empirical Analysis of the Returns on Swiss Stocks. ......... 80 3.5.1 The Data 80 3.5.2 Descriptive Statistics and Correlation. .............. 80 3.5.3 Implementation of an Alternative Model 82 3.5.4 Impact ofthe Alternative Modelling. ............... 90 3.6 Continuous-Time Models. ............................... 92 3.7 Summary.............................................. 97 4. Valuation ofFinancial Instruments 99 4.1 Principles ofValuation 100 4.1.1 Valuation by Arbitrage 102 4.2 Cash Instruments 116 4.2.1 Equities 116 4.2.2 Fixed-Income Instruments 117 4.3 Futures and Forwards 119 4.4 Options 121 4.4.1 The Black-Scholes Analysis 122 4.4.2 Risk-Neutral Valuation 124 4.4.3 Numerical Approaches 126 4.5 Approximation ofthe Value Function 133 4.5.1 Global Taylor Approximation for Option Pricing 135 4.5.2 Piecewise Taylor Approximations 136 5. Approximation ofthe Portfolio Distribution 141 5.1 Analytical Methods 142 5.1.1 Delta Approximation 144 5.1.2 Delta-Gamma Approximation 146 5.2 Generation ofScenarios 151 5.2.1 The Pseudo-Random Method 152 5.2.2 The Quasi-Random Method 153 5.2.3 Generation ofDistributions for the Risk Factors 159 5.3 Monte Carlo Simulation 165 5.3.1 Error Analysis 166 5.3.2 Variance Reduction Techniques 173 5.4 The BDPQA 177 5.4.1 Simplices 178 5.4.2 Simplicial Coverage ofthe Risk Factor Distribution 180 5.4.3 Barycentric Discretisation 183 5.4.4 Approximation ofthe Portfolio Distribution 185 5.4.5 Refinement Strategies 188 5.4.6 Numerical Example 191 5.5 Benchmarking the BDPQA 195 5.5.1 The Choice ofthe Holding Period 201 5.6 Summary 202 Contents XI 6. Sample Estimation of Risk Measures 205 6.1 Introduction 205 6.2 Order Statistics 206 6.2.1 Distribution of Order Statistics 206 6.2.2 Moments of Order Statistics 209 6.2.3 Confidence Interval for Population Quantiles 210 6.3 Quantile Estimators Based on Order Statistics 213 6.3.1 Linear Combination ofSeveral Order Statistics 214 6.4 Kernel-Based Estimators 215 6.4.1 Accuracy ofthe Estimate Density 217 6.4.2 Bandwidth Selection 221 6.4.3 Quantile Estimation Based on the Kernel Density Method 223 6.5 Comparison ofthe Quantile Estimators 224 6.6 Summary 227 7. Conclusion and Outlook 229 7.1 Summary 229 7.2 The Issue of Credit Risk 232 7.3 Outlook 233 A. Probability and Statistics 235 A.l Probabilistic Modelling 235 A.2 Random Variable 237 A.2.1 Distribution Function 238 A.2.2 Moments 239 A.2.3 Independence and Correlation 241 A.2.4 Conditional Probability and Expectation 242 A.2.5 Stochastic Processes and Information Structure 243 A.2.6 Martingales 244 A.3 Selected Distributions 245 A.3.1 Basic Distributions 245 A.3.2 Elliptically Contoured Distributions 246 A.3.3 Stable Distribution 248 A.4 Types of Convergence 249 A.5 Sampling Theory 251 Bibliography 253 List ofFigures ................................................ 265 List of Tables 267 Index 269 1. Introduction 1.1 The Need for Risk Measurement Financial risk, the financial exposure to uncertainty, has become a crucial issuefor both financial and non-financial corporations. Recent scandals (Bar ings, Orange County, Metallgesellschaft, LTCM) show the need for powerful riskmanagementtools. Inadditiontotherecentdebacles,severalfactorshave contributed to the development of a consistent and integrated treatment of financial risk: • the increasing volatility ofthe markets • the development ofinformation technology • the deregulation offinancial markets • the processes ofsecurisation and disintermediation • the shift in the legal and regulatory environment. It is generally accepted that the financial world has become riskier over the pastdecades. Whilethevolatilityoftheequitymarketshasbeenobserved at least since the first crash of 1929, other markets have experienced an in crease of uncertainty more recently. The breakdown of the Bretton Woods agreement has led to an evident increase in exchange rate volatility. As the central banks began to target money supply growth to restrain inflation, in terest rates in turn have become more volatile. Finally, the price of several basic commodities, especially petroleum, began to fluctuate heavily in the 70's. The general increase in volatility of the financial markets can be partly explained by the growing uncertainty ofthe economic environment. It is, on the other hand, a reflection of the growing efficiency and integration of the financial markets. The development of information technology and the inte gration of financial markets allow the almost instantaneous move of capital from one market place to another and therefore the rapid assimilation of any new, available information. In efficient markets, all current information, which issupposedto arriveat random, isfully reflected in the prices. As a re sult, future prices are hard to predict and uncertainty increaseswith the time P-Y Moix, The Measurement of Market Risk © Springer-Verlag Berlin Heidelberg 2001

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This book is a revised version of my doctoral dissertation submitted to the University of St. Gallen in October 1999. I would like to thank Dr. oec. Marc Wildi whose careful reading of much of the text led to many improvements. All errors remain mine. Pfiiffikon SZ, Switzerland, March 2001 Pierre-Yv
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