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Credit risk evaluation using adaptive Lq penalty SVM with Gauss kernel 被引量:1

Credit risk evaluation using adaptive Lq penalty SVM with Gauss kernel
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摘要 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. 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 dimensio...
出处 《Journal of Southeast University(English Edition)》 EI CAS 2008年第S1期33-36,共4页 东南大学学报(英文版)
基金 The National Natural Science Foundation of China (No.70531040) the National Basic Research Program of China (973 Program) (No.2004CB720103)
关键词 credit risk evaluation adaptive penalty classification support vector machine feature selection credit risk evaluation adaptive penalty classification support vector machine feature selection
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