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Journal of Zhejiang University SCIENCE C

ISSN 1869-1951(Print), 1869-196x(Online), Monthly

Credit scoring by feature-weighted support vector machines

Abstract: Recent finance and debt crises have made credit risk management one of the most important issues in financial research. Reliable credit scoring models are crucial for financial agencies to evaluate credit applications and have been widely studied in the field of machine learning and statistics. In this paper, a novel feature-weighted support vector machine (SVM) credit scoring model is presented for credit risk assessment, in which an F-score is adopted for feature importance ranking. Considering the mutual interaction among modeling features, random forest is further introduced for relative feature importance measurement. These two feature-weighted versions of SVM are tested against the traditional SVM on two real-world datasets and the research results reveal the validity of the proposed method.

Key words: Credit scoring model, Support vector machine (SVM), Feature weight, Random forest


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DOI:

10.1631/jzus.C1200205

CLC number:

TP391.4

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Cited:

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On-line Access:

2013-03-05

Received:

2012-06-28

Revision Accepted:

2013-01-22

Crosschecked:

2013-02-25

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