A non-parametric procedure to estimate a linear discriminant function with an application to credit scoring

The present work studies the application of two group discriminant analysis in the field of credit scoring. The view here given provides a completely different approach to how this problem is usually targeted. Credit scoring is widely used among financial institutions and is performed in a number of...

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Main Author: Voorduin, Raquel
Published: University of Warwick 2004
Subjects:
Online Access:http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.414399
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spelling ndltd-bl.uk-oai-ethos.bl.uk-4143992015-03-19T03:51:54ZA non-parametric procedure to estimate a linear discriminant function with an application to credit scoringVoorduin, Raquel2004The present work studies the application of two group discriminant analysis in the field of credit scoring. The view here given provides a completely different approach to how this problem is usually targeted. Credit scoring is widely used among financial institutions and is performed in a number of ways, depending on a wide range of factors, which include available information, support data bases, and informatic resources. Since each financial institution has its own methods of measuring risk, the ways in which an applicant is evaluated for the concession of credit for a particular product are at least as many as credit concessioners. However, there exist certain standard procedures for different products. For example, in the credit card business, when databases containing applicant information are available, usually credit score cards are constructed. These score cards provide an aid to qualify the applicant and decide if he or she represents a high risk for the institution or, on the contrary, a good investment. Score cards are generally used in conjunction with other criteria, such as the institution's own policies. In building score cards, generally parametric regression based procedures are used, where the assumption of an underlying model generating the data has to be made. Another aspect is that, in general, score cards are built taking into consideration only the probability that a particular applicant will not default. In this thesis, the objective will be to present a method of calculating a risk score that, does not depend on the actual process generating the data and that takes into account the costs and profits related to accepting a particular applicant. The ultimate objective of the financial institution should be to maximise profit and this view is a fundamental part of the procedure presented here.519.535HG Finance : QA MathematicsUniversity of Warwickhttp://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.414399http://wrap.warwick.ac.uk/3710/Electronic Thesis or Dissertation
collection NDLTD
sources NDLTD
topic 519.535
HG Finance : QA Mathematics
spellingShingle 519.535
HG Finance : QA Mathematics
Voorduin, Raquel
A non-parametric procedure to estimate a linear discriminant function with an application to credit scoring
description The present work studies the application of two group discriminant analysis in the field of credit scoring. The view here given provides a completely different approach to how this problem is usually targeted. Credit scoring is widely used among financial institutions and is performed in a number of ways, depending on a wide range of factors, which include available information, support data bases, and informatic resources. Since each financial institution has its own methods of measuring risk, the ways in which an applicant is evaluated for the concession of credit for a particular product are at least as many as credit concessioners. However, there exist certain standard procedures for different products. For example, in the credit card business, when databases containing applicant information are available, usually credit score cards are constructed. These score cards provide an aid to qualify the applicant and decide if he or she represents a high risk for the institution or, on the contrary, a good investment. Score cards are generally used in conjunction with other criteria, such as the institution's own policies. In building score cards, generally parametric regression based procedures are used, where the assumption of an underlying model generating the data has to be made. Another aspect is that, in general, score cards are built taking into consideration only the probability that a particular applicant will not default. In this thesis, the objective will be to present a method of calculating a risk score that, does not depend on the actual process generating the data and that takes into account the costs and profits related to accepting a particular applicant. The ultimate objective of the financial institution should be to maximise profit and this view is a fundamental part of the procedure presented here.
author Voorduin, Raquel
author_facet Voorduin, Raquel
author_sort Voorduin, Raquel
title A non-parametric procedure to estimate a linear discriminant function with an application to credit scoring
title_short A non-parametric procedure to estimate a linear discriminant function with an application to credit scoring
title_full A non-parametric procedure to estimate a linear discriminant function with an application to credit scoring
title_fullStr A non-parametric procedure to estimate a linear discriminant function with an application to credit scoring
title_full_unstemmed A non-parametric procedure to estimate a linear discriminant function with an application to credit scoring
title_sort non-parametric procedure to estimate a linear discriminant function with an application to credit scoring
publisher University of Warwick
publishDate 2004
url http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.414399
work_keys_str_mv AT voorduinraquel anonparametricproceduretoestimatealineardiscriminantfunctionwithanapplicationtocreditscoring
AT voorduinraquel nonparametricproceduretoestimatealineardiscriminantfunctionwithanapplicationtocreditscoring
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