Title of article :
Support vector machines for default prediction of SMEs based on technology credit
Author/Authors :
Hong Sik Kim، نويسنده , , So Young Sohn، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Pages :
9
From page :
838
To page :
846
Abstract :
In Korea, many forms of credit guarantees have been issued to fund small and medium enterprises (SMEs) with a high degree of growth potential in technology. However, a high default rate among funded SMEs has been reported. In order to effectively manage such governmental funds, it is important to develop an accurate scoring model for selecting promising SMEs. This paper provides a support vector machines (SVM) model to predict the default of funded SMEs, considering various input variables such as financial ratios, economic indicators, and technology evaluation factors. The results show that the accuracy performance of the SVM model is better than that of back-propagation neural networks (BPNs) and logistic regression. It is expected that the proposed model can be applied to a wide range of technology evaluation and loan or investment decisions for technology-based SMEs.
Keywords :
Default prediction model , Small and medium enterprises , support vector machines
Journal title :
European Journal of Operational Research
Serial Year :
2010
Journal title :
European Journal of Operational Research
Record number :
1312492
Link To Document :
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