Credit risk evaluation using adaptive Lq penalty SVM with Gauss kernel

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Sun Dongxia Li Jianping Wei Liwei Institute of Policy and Management Chinese Academy of Sciences Beijing China Graduate School Chinese Academy of Sciences Beijing China [1 ,2 ,1 ,1 ,2 ,1 ,100190 ,2 ,100039 ]
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In order to improve the performance of support vector machine (SVM) applications in the field of credit risk evaluation, an adaptive Lq SVM model with Gauss kernel (ALqG-SVM) is proposed to evaluate credit risks. The non-adaptive penalty of the object function is extended to (0, 2] to increase classification accuracy. To further improve the generalization performance of the proposed model, the Gauss kernel is introduced, thus the non-linear classification problem can be linearly separated in higher dimensional feature space. Two UCI credit datasets and a real life credit dataset from a US major commercial bank are used to check the efficiency of this model. Compared with other popular methods, satisfactory results are obtained through a novel method in the area of credit risk evaluation. So the new model is an excellent choice.
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