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NTIS 바로가기Expert systems with applications, v.30 no.3, 2006년, pp.427 - 435
Chen, Wun-Hwa (Graduate Institute of Business Administration, National Taiwan University, Taiwan, ROC) , Shih, Jen-Ying (Securities and Futures Institute, 9F, 3, Nan-Hai Rd., Taipei 100, Taiwan, ROC)
AbstractBy providing credit risk information, credit rating systems benefit most participants in financial markets, including issuers, investors, market regulators and intermediaries. In this paper, we propose an automatic classification model for issuer credit ratings, a type of fundamental credit ...
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