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Article type: Research Article
Authors: Chaudhuri, Arindam
Affiliations: Faculty of Post Graduate Studies and Research, Computer Engineering and Technology, Marwadi Education Foundation's Group of Institutions, Rajkot, India. E-mail: [email protected]
Abstract: In the recent past, credit approval is a significant problem in credit risk management. Making decision to approve a credit has been a source of major concern for financial institutions. As such the problem is formulated as classification problem where making correct decision yields maximum returns. The classification task is taken care of by modified fuzzy support vector machine (MFSVM). It is variant of fuzzy support vector machine (FSVM) developed by Chaudhuri et al. The inherent vagueness and uncertainty in training samples are handled by new fuzzy membership function with hyperbolic tangent kernel. The success of classification lies in considering fuzzy membership function as function of center and radius of each class in feature space and representing it with kernel. In nonlinear training samples, input space is mapped into high dimensional feature space to compute separating surface using linear separating method. The different input points make unique contributions to decision surface. MFSVM produces significant results for Australian Credit Approval dataset. The model is tested with both linear and nonlinear kernels. MFSVM performance is also assessed in light of number of support vectors required to model the data. The effect of variability in prediction and generalization of MFSVM is studied with respect to parameters C and δ2. The area under curve helps to reduce imbalance issues in the dataset considered. The training samples are either linear or nonlinear separable. MFSVM effectively handles the issue of nonlinear classification problem. Experimental results on both artificial and real datasets support the fact that MFSVM achieves superior performance in reducing outliers' effects than FSVM.
Keywords: Classification, credit approvals, FSVM, MFSVM, fuzzy membership function
DOI: 10.3233/AIC-140597
Journal: AI Communications, vol. 27, no. 2, pp. 189-211, 2014
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