A loan default discrimination model using cost-sensitive support vector machine improved by PSO

被引:0
|
作者
Jie Cao
Hongke Lu
Weiwei Wang
Jian Wang
机构
[1] Nanjing University of Information Science and Technology,School of Economics and Management
[2] Southeast University,School of Economics and Management
[3] Jiangsu Jinnong Information Co.,undefined
[4] Ltd.,undefined
来源
关键词
Particle swarm optimization; Cost sensitive learning; Support vector machine; Loan default prediction; Attribute reduction;
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学科分类号
摘要
This study proposes a novel PSO–CS-SVM model that hybridizes the particle swarm optimization (PSO) and cost sensitive support vector machine (CS-SVM) to deal with the problem of unbalanced data classification and asymmetry misclassification cost in loan default discrimination problem. Cost sensitive learning is applied to the standard SVM by integrating misclassification cost of each sample into standard SVM and PSO is employed for parameter determination of the CS-SVM. Meantime, the financial data are discretized by using the self-organizing mapping neural network. And the evaluation indices are reduced without information loss by genetic algorithm for decreasing the complexity of the model. The effectiveness of integrated model of CS-SVM and PSO is verified by three experiments comparing with traditional CS-SVM, PSO–SVM, SVM and BP neural network through real loan default data of companies in China. The corresponding results indicate that the accuracy rate, hit rate, covering rate and lift coefficient are improved dramatically by the developed approach. The proposed method can control the different types of errors distribution with various cost of misclassification accurately, reduce the total misclassification cost largely, and distinguish the loan default problems effectively.
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页码:193 / 204
页数:11
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