A Soft Intelligent Risk Evaluation Model for Credit Scoring Classification
Risk management is one of the most important branches of business and finance. Classification models are the most popular and widely used analytical group of data mining approaches that can greatly help financial decision makers and managers to tackle credit risk problems. However, the literature cl...
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doaj-1c53cef9d05d4021978b1e31a58db76e2020-11-24T23:33:52ZengMDPI AGInternational Journal of Financial Studies2227-70722015-09-013341142210.3390/ijfs3030411ijfs3030411A Soft Intelligent Risk Evaluation Model for Credit Scoring ClassificationMehdi Khashei0Akram Mirahmadi1Department of Industrial Engineering, Isfahan University of Technology (IUT), Isfahan 84156-83111, IranDepartment of Industrial Engineering, Isfahan University of Technology (IUT), Isfahan 84156-83111, IranRisk management is one of the most important branches of business and finance. Classification models are the most popular and widely used analytical group of data mining approaches that can greatly help financial decision makers and managers to tackle credit risk problems. However, the literature clearly indicates that, despite proposing numerous classification models, credit scoring is often a difficult task. On the other hand, there is no universal credit-scoring model in the literature that can be accurately and explanatorily used in all circumstances. Therefore, the research for improving the efficiency of credit-scoring models has never stopped. In this paper, a hybrid soft intelligent classification model is proposed for credit-scoring problems. In the proposed model, the unique advantages of the soft computing techniques are used in order to modify the performance of the traditional artificial neural networks in credit scoring. Empirical results of Australian credit card data classifications indicate that the proposed hybrid model outperforms its components, and also other classification models presented for credit scoring. Therefore, the proposed model can be considered as an appropriate alternative tool for binary decision making in business and finance, especially in high uncertainty conditions.http://www.mdpi.com/2227-7072/3/3/411risk managementclassificationcredit scoringsoft computing techniquesartificial intelligentMulti-Layer Perceptrons (MLPs) |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Mehdi Khashei Akram Mirahmadi |
spellingShingle |
Mehdi Khashei Akram Mirahmadi A Soft Intelligent Risk Evaluation Model for Credit Scoring Classification International Journal of Financial Studies risk management classification credit scoring soft computing techniques artificial intelligent Multi-Layer Perceptrons (MLPs) |
author_facet |
Mehdi Khashei Akram Mirahmadi |
author_sort |
Mehdi Khashei |
title |
A Soft Intelligent Risk Evaluation Model for Credit Scoring Classification |
title_short |
A Soft Intelligent Risk Evaluation Model for Credit Scoring Classification |
title_full |
A Soft Intelligent Risk Evaluation Model for Credit Scoring Classification |
title_fullStr |
A Soft Intelligent Risk Evaluation Model for Credit Scoring Classification |
title_full_unstemmed |
A Soft Intelligent Risk Evaluation Model for Credit Scoring Classification |
title_sort |
soft intelligent risk evaluation model for credit scoring classification |
publisher |
MDPI AG |
series |
International Journal of Financial Studies |
issn |
2227-7072 |
publishDate |
2015-09-01 |
description |
Risk management is one of the most important branches of business and finance. Classification models are the most popular and widely used analytical group of data mining approaches that can greatly help financial decision makers and managers to tackle credit risk problems. However, the literature clearly indicates that, despite proposing numerous classification models, credit scoring is often a difficult task. On the other hand, there is no universal credit-scoring model in the literature that can be accurately and explanatorily used in all circumstances. Therefore, the research for improving the efficiency of credit-scoring models has never stopped. In this paper, a hybrid soft intelligent classification model is proposed for credit-scoring problems. In the proposed model, the unique advantages of the soft computing techniques are used in order to modify the performance of the traditional artificial neural networks in credit scoring. Empirical results of Australian credit card data classifications indicate that the proposed hybrid model outperforms its components, and also other classification models presented for credit scoring. Therefore, the proposed model can be considered as an appropriate alternative tool for binary decision making in business and finance, especially in high uncertainty conditions. |
topic |
risk management classification credit scoring soft computing techniques artificial intelligent Multi-Layer Perceptrons (MLPs) |
url |
http://www.mdpi.com/2227-7072/3/3/411 |
work_keys_str_mv |
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