Using Bayesian networks for bankruptcy prediction: Some methodological issues

European Journal of Operational Research - Tập 180 - Trang 738-753 - 2007
Lili Sun1, Prakash P. Shenoy2
1Accounting and Information Systems, Rutgers, The State University of New Jersey, 180 University Ave, Newark, NJ 07102-1897, USA
2School of Business, University of Kansas, 1300 Sunnyside Ave., Summerfield Hall, Lawrence, KS 66045-7585, USA

Tài liệu tham khảo

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