Credit Scoring Models for Egyptian Banks: Neural Nets and Genetic Programming versus Conventional Techniques
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @PhdThesis{2009AbdouEthosPhD,
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author = "Hussein Ali Hussein Abdou",
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title = "Credit Scoring Models for Egyptian Banks: Neural Nets
and Genetic Programming versus Conventional
Techniques",
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school = "Plymouth Business School, University of Plymouth",
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year = "2009",
-
address = "UK",
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month = apr,
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keywords = "genetic algorithms, genetic programming",
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URL = "https://pearl.plymouth.ac.uk/bitstream/handle/10026.1/379/2009AbdouEthosPhD.pdf",
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URL = "http://hdl.handle.net/10026.1/379",
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URL = "http://ethos.bl.uk/OrderDetails.do?did=55&uin=uk.bl.ethos.494192",
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size = "452 pages",
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abstract = "Credit scoring has been regarded as a core appraisal
tool of banks during the last few decades, and has been
widely investigated in the area of finance, in general,
and banking sectors, in particular. In this thesis, the
main aims and objectives are: to identify the currently
used techniques in the Egyptian banking credit
evaluation process; and to build credit scoring models
to evaluate personal bank loans. In addition, the
subsidiary aims are to evaluate the impact of sample
proportion selection on the Predictive capability of
both advanced scoring techniques and conventional
scoring techniques, for both public banks and a private
banking case-study; and to determine the key
characteristics that affect the personal loans' quality
(default risk). The stages of the research comprised:
firstly, an investigative phase, including an early
pilot study, structured interviews and a questionnaire;
and secondly, an evaluative phase, including an
analysis of two different data-sets from the Egyptian
private and public banks applying average correct
classification rates and estimated misclassification
costs as criteria. Both advanced scoring techniques,
namely, neural nets (probabilistic neural nets and
multi-layer feed-forward nets) and genetic programming,
and conventional techniques, namely, a weight of
evidence measure, multiple discriminant analysis,
probit analysis and logistic regression were used to
evaluate credit default risk in Egyptian banks. In
addition, an analysis of the data-sets using Kohonen
maps was undertaken to provide additional visual
insights into cluster groupings. From the investigative
stage, it was found that all public and the vast
majority of private banks in Egypt are using
judgemental approaches in their credit evaluation. From
the evaluative stage, clear distinctions between the
conventional techniques and the advanced techniques
were found for the private banking case-study; and the
advanced scoring techniques (such as powerful neural
nets and genetic programming) were superior to the
conventional techniques for the public sector banks.
Concurrent loans from other banks and guarantees by the
corporate employer of the loan applicant, which have
not been used in other reported studies, are identified
as key variables and recommended in the specific
environment chosen, namely Egypt. Other variables, such
as a feasibility study and the Central Bank of Egypt
report also play a contributory role in affecting the
loan quality.",
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notes = "Supervisor John Pointon uk.bl.ethos.494192",
- }
Genetic Programming entries for
Hussein A Abdou
Citations