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Variable selection and oversampling in the use of smooth support vector machines for predicting the default risk of companies
Authors:Wolfgang Härdle  Yuh‐Jye Lee  Dorothea Schäfer  Yi‐Ren Yeh
Affiliation:1. CASE, Humboldt University, Berlin, Germany;2. Department of Computer Science Information Engineering, National Taiwan University of Science and Technology, Taipei, Taiwan;3. German Institute of Economic Research, Berlin, Germany
Abstract:In the era of Basel II a powerful tool for bankruptcy prognosis is vital for banks. The tool must be precise but also easily adaptable to the bank's objectives regarding the relation of false acceptances (Type I error) and false rejections (Type II error). We explore the suitability of smooth support vector machines (SSVM), and investigate how important factors such as the selection of appropriate accounting ratios (predictors), length of training period and structure of the training sample influence the precision of prediction. Moreover, we show that oversampling can be employed to control the trade‐off between error types, and we compare SSVM with both logistic and discriminant analysis. Finally, we illustrate graphically how different models can be used jointly to support the decision‐making process of loan officers. Copyright © 2008 John Wiley & Sons, Ltd.
Keywords:insolvency prognosis  support vector machines  statistical learning theory  non‐parametric classification
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