An empirical investigation of a structural credit risk model

Default probabilities are important to the credit markets. Changes in default probabilities of a borrowing firm may predict the occurrence of financial distress or default in the firm. Knowing a firm's default likelihood is important to financial lenders as it allows them to estimate their resu...

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Main Authors: Koo, Wai Ming., Lee, Teck Kiang., Sim, Carolyn Boon Kheng.
Other Authors: Khoo, Guan Seng
Format: Theses and Dissertations
Published: 2008
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Online Access:http://hdl.handle.net/10356/5889
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Institution: Nanyang Technological University
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spelling sg-ntu-dr.10356-58892023-03-11T17:26:28Z An empirical investigation of a structural credit risk model Koo, Wai Ming. Lee, Teck Kiang. Sim, Carolyn Boon Kheng. Khoo, Guan Seng School of Mechanical and Production Engineering DRNTU::Engineering::Mechanical engineering::Mechanics and dynamics Default probabilities are important to the credit markets. Changes in default probabilities of a borrowing firm may predict the occurrence of financial distress or default in the firm. Knowing a firm's default likelihood is important to financial lenders as it allows them to estimate their resulting credit exposure to the firm. In this dissertation, we examine the likelihood of default of a group of local companies listed on the Singapore Exchange using the default prediction framework of the KMV Corporation of San Francisco. Although a variety of default risk models are available in the market, we have chosen the KMV approach for several reasons. First, it is relatively simple to implement. Second, by being based on stock market data rather than "historic" book value accounting data, it is forward-looking. Third, it has strong theoretical underpinnings, having its basis on the modern theory of corporate finance and options. Based on our study, there appears to be significant leading information about credit events in the expected default frequencies (EDFs) generated using the KMV framework. Master of Science (Financial Engineering) 2008-09-17T11:01:39Z 2008-09-17T11:01:39Z 2000 2000 Thesis http://hdl.handle.net/10356/5889 Nanyang Technological University application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
topic DRNTU::Engineering::Mechanical engineering::Mechanics and dynamics
spellingShingle DRNTU::Engineering::Mechanical engineering::Mechanics and dynamics
Koo, Wai Ming.
Lee, Teck Kiang.
Sim, Carolyn Boon Kheng.
An empirical investigation of a structural credit risk model
description Default probabilities are important to the credit markets. Changes in default probabilities of a borrowing firm may predict the occurrence of financial distress or default in the firm. Knowing a firm's default likelihood is important to financial lenders as it allows them to estimate their resulting credit exposure to the firm. In this dissertation, we examine the likelihood of default of a group of local companies listed on the Singapore Exchange using the default prediction framework of the KMV Corporation of San Francisco. Although a variety of default risk models are available in the market, we have chosen the KMV approach for several reasons. First, it is relatively simple to implement. Second, by being based on stock market data rather than "historic" book value accounting data, it is forward-looking. Third, it has strong theoretical underpinnings, having its basis on the modern theory of corporate finance and options. Based on our study, there appears to be significant leading information about credit events in the expected default frequencies (EDFs) generated using the KMV framework.
author2 Khoo, Guan Seng
author_facet Khoo, Guan Seng
Koo, Wai Ming.
Lee, Teck Kiang.
Sim, Carolyn Boon Kheng.
format Theses and Dissertations
author Koo, Wai Ming.
Lee, Teck Kiang.
Sim, Carolyn Boon Kheng.
author_sort Koo, Wai Ming.
title An empirical investigation of a structural credit risk model
title_short An empirical investigation of a structural credit risk model
title_full An empirical investigation of a structural credit risk model
title_fullStr An empirical investigation of a structural credit risk model
title_full_unstemmed An empirical investigation of a structural credit risk model
title_sort empirical investigation of a structural credit risk model
publishDate 2008
url http://hdl.handle.net/10356/5889
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