Title of article
Orthogonal support vector machine for credit scoring
Author/Authors
Han، نويسنده , , Lu and Han، نويسنده , , Liyan and Zhao، نويسنده , , Hongwei، نويسنده ,
Pages
15
From page
848
To page
862
Abstract
The most commonly used techniques for credit scoring is logistic regression, and more recent research has proposed that the support vector machine is a more effective method. However, both logistic regression and support vector machine suffers from curse of dimension. In this paper, we introduce a new way to address this problem which is defined as orthogonal dimension reduction. We discuss the related properties of this method in detail and test it against other common statistical approaches—principal component analysis and hybridizing logistic regression to better solve and evaluate the data. With experiments on German data set, there is also an interesting phenomenon with respect to the use of support vector machine, which we define as ‘Dimensional interference’, and discuss in general. Based on the results of cross-validation, it can be found that through the use of logistic regression filtering the dummy variables and orthogonal extracting feature, the support vector machine not only reduces complexity and accelerates convergence, but also achieves better performance.
Keywords
Support vector machine , Orthogonal dimension reduction , logistic regression , credit scoring , Principal component analysis , Dimension curse
Journal title
Astroparticle Physics
Record number
2047701
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