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Svenja Hager Pricing Portfolio Credit Derivatives by Means of Evolutionary Algorithms GABLER EDITION WISSENSCHAFT Svenja Hager Pricing Portfolio Credit Derivatives by Means of Evolutionary Algorithms With a foreword by Prof Dr.-Ing Rainer Schöbel GABLER EDITION WISSENSCHAFT Bibliographic information published by Die Deutsche Nationalbibliothek Die Deutsche Nationalbibliothek lists this publication in the Deutsche Nationalbibliografie; detailed bibliographic data is available in the Internet at Dissertation Universität Tübingen, 2007 1st Edition 2008 All rights reserved © Betriebswirtschaftlicher Verlag Dr Th Gabler | GWV Fachverlage GmbH, Wiesbaden 2008 Editorial Office: Frauke Schindler / Anita Wilke Gabler-Verlag is a company of Springer Science+Business Media www.gabler.de No part of this publication may be reproduced, stored in a retrieval system or transmitted, mechanical, photocopying or otherwise without prior permission of the copyright holder Registered and/or industrial names, trade names, trade descriptions etc cited in this publication are part of the law for trade-mark protection and may not be used free in any form or by any means even if this is not specifically marked Cover design: Regine Zimmer, Dipl.-Designerin, Frankfurt/Main Printed on acid-free paper Printed in Germany ISBN 978-3-8349-0915-2 Dedicated to my parents and my beloved husband Foreword Collateralized Debt Obligations (CDOs) are the most prominent example of portfoliorelated credit derivatives They make it possible to diversify and transfer credit risk by pooling and redistributing the risks of an underlying portfolio of defaultable assets It comes as no surprise that the dependence structure of portfolio assets is crucial for the valuation of CDO tranches The standard market model is the Gaussian copula model, which uses only one parameter to summarize the correlations of default times in the underlying credit portfolio Comparable with the volatility smile from option pricing, this simplification leads to an implied correlation smile when the model is confronted with market data There is a growing interest in literature searching for solutions of this problem Dr Svenja Hager contributes to this literature by extending the Gaussian copula model, allowing for a heterogeneous specification of the dependence structure of the underlying portfolio She shows that heterogeneous correlation matrices are able to explain the correlation smile Based on this discovery, she develops a method to find the implied correlation matrix which optimally reproduces the observed tranche spreads of a CDO structure To overcome the complexity of the resulting optimization problems, Evolutionary Algorithms are applied successfully This monograph puts a new complexion on the standard market model and should therefore be recognized for its substantial contribution in this fascinating field of research on credit derivatives Rainer Schöbel Acknowledgements First and foremost, I would like to express gratitude and appreciation for my advisor Prof Dr.-Ing Rainer Schöbel Prof Schöbel gave me valuable academic advice and support during my three years at the University of Tübingen I am thankful that he supervised my dissertation and that he provided me the freedom to research in the exciting area of credit risk modeling I would also like to thank the second referee of this thesis, Prof Dr Joachim Grammig, for his comments and suggestions in our internal seminars Next, I record my gratitude to Dr Axel Hager-Fingerle His enthusiasm for science has always encouraged me to investigate new areas of research Numerous discussions with him significantly improved the ideas expressed in this dissertation I also thank Dr Markus Bouziane for his companionship and for providing plenty of useful information, and Vera Klöckner for her organizational assistance I am much obliged to Ute Hager for her literature search and to Clemens Dangelmayr for his computational assistance I wish to acknowledge financial assistance of the Deutsche Forschungsgemeinschaft by funding my research at the University of Tübingen, and of the Stiftung Landesbank Baden-Württemberg by supporting the publication of this dissertation Moreover, I thank JPMorgan Chase for providing the data sets used in this study I am deeply grateful to my parents for being there for me every single day of my life All the confidence and joy that I possess is born of your love and belief in me I am wholeheartedly thankful for having a wonderful sister who has always been my long-distance confidante Above all, I want to thank my beloved husband I am grateful for your caring love and friendship You make my life complete Svenja Hager Table of Contents List of Tables xvii List of Figures xix List of Notations xxiii Introduction Collateralized Debt Obligations: Structure and Valuation 2.1 Introduction 2.2 Credit Risk Transfer Instruments 2.2.1 Credit Default Swaps 2.2.2 CDS Indices 2.2.3 Collateralized Debt Obligations 10 2.2.3.1 Arbitrage and Balance Sheet CDOs 11 2.2.3.2 Cash Flow and Market Value CDOs 12 2.2.3.3 Static Structures and Managed Structures 13 2.2.3.4 Cash Structures and Synthetic Structures 13 2.2.3.5 Single-Tranche Deals 15 2.2.3.6 Effect of Correlation 16 CDS Index Tranches 17 2.2.4 2.3 Credit Risk Modeling 18 2.3.1 18 Single-Name Credit Risk: Intensity-Based Models 2.3.1.1 Stopping Times and the Hazard Rate Function 19 2.3.1.2 Homogeneous Poisson Processes 22 2.3.1.3 Inhomogeneous Poisson Processes 23 2.3.1.4 Cox Processes 24 2.3.2 Multi-Name Credit Risk: Copula Models 25 2.3.3 Valuation of Synthetic CDOs 29 Table of Contents xii 2.3.3.1 Joint Distribution of Default Times in the Gaussian Copula Approach 30 2.3.3.2 Joint Distribution of Default Times in the Gaussian OneFactor Copula Approach 32 2.3.3.3 Pricing the Default Leg and the Margin Leg of a CDO 33 2.3.3.3.1 The Default Leg 33 2.3.3.3.2 The Margin Leg 34 2.3.3.4 proach 35 2.3.3.5 2.4 Distribution of the Portfolio Loss in the One-Factor ApMonte-Carlo Simulation of CDO Tranche Spreads 35 Valuation of CDOs: Literature 36 Explaining the Implied Correlation Smile 41 3.1 Introduction 41 3.2 Sensitivity of the Tranche Price to the Level of Correlation 42 3.3 The Implied Tranche Correlation 44 3.4 The Implied Correlation Smile 45 3.5 The Implied Base Correlation 47 3.6 Evolution of the Implied Correlation Smile 49 3.7 Modeling the Correlation Smile: Literature 56 3.8 Heterogeneous Dependence Structures 58 3.8.1 Heterogeneous Dependence Structures Can Cause Implied Correlation Smiles 60 3.8.1.1 The Existence Problem 60 3.8.1.2 The Uniqueness Problem 61 3.8.1.3 Exemplary Heterogeneous Matrices 62 3.8.2 Different Dependence Structures Can Lead to Identical Implied 3.8.3 Heterogeneous Dependence Structures Do Not Necessarily Lead to Tranche Correlations Implied Correlation Smiles 3.8.4 63 64 Heterogeneous Dependence Structures Allow for Flexible Portfolio Loss Distributions 3.9 65 Conclusion 65 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underlying portfolio of defaultable

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  • 3834909157

  • Pricing Portfolio Credit Derivatives by Means of Evolutionary Algorithms

  • Foreword

  • Acknowledgements

  • Table of Contents

  • List of Tables

  • List of Figures

  • List of Notations

  • Chapter 1 Introduction

  • Chapter 2 Collateralized Debt Obligations: Structure and Valuation

  • Chapter 3 Explaining the Implied Correlation Smile

  • Chapter 4 Optimization by Means of Evolutionary Algorithms

  • Chapter 5 Evolutionary Algorithms in Finance: Deriving the Dependence Structure

  • Chapter 6 Experimental Results

  • Chapter 7 Summary and Outlook

  • back-matter.pdf

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