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Rbr. AUTORI NAZIV ŒLANKA OSTALE INFORMACIJE 587-662

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Rbr. AUTORI NAZIV ČLANKA OSTALE INFORMACIJE 1. Acs, J.Z., Essiehausen, G., Mester, J.L., Padhi, M.S., Srinivasan, A., Woosley, W.L. Credit Scoring and Securitization of small Business Loans 587-662 2. Aguais, S., Forest, L., Rosen, D. Building a Credit Risk Valuation Framework for Loan Instruments Algo Research Quarterly, VOL. 3, NO.3 December 2000, 21-46 3. Adams, N. M., Hand, D. J. An improved measure for comparing diagnostic tests May,1999. 4. Akhavein, J., Frame,W.S., White, L. J., The Diffusion of financial innovations:An examination of the adoption of small business credit scoring by large banking organizations Working Paper Series(Federal Reserves Bank of Atlanta),Apr2001, Vol.2001,Issue 9 5. Allen, L., Delong, G., Saunders, A., Issues in the credit risk modeling of retail markets Journal of Banking & Finance 28, 2004., 727-752 6. Altman, E.I., Rijken, H.A. How rating agencies achieve rating stability Journal of Banking & Financ 28 (2004) 2679-2714 7. Altman, E.I., Haldeman, R.G., Narayanan, P. ZETA Analysis, Journal of Banking and Finance 1, 1977, p. 29-54. 8. Altman, E.I., Marco, G., Varetto, F. Corporate Disteress Diagnosis: Comparison Using Linear Discriminant Analysis and Neural Networks (the Italian Journal of Banking and Finance, 18, 1994, p. 505-529
Transcript

Rbr. AUTORI NAZIV ČLANKA OSTALE INFORMACIJE

1.

Acs, J.Z., Essiehausen, G., Mester, J.L., Padhi, M.S., Srinivasan, A.,

Woosley, W.L.

Credit Scoring and Securitization of small

Business Loans

587-662

2.

Aguais, S., Forest, L., Rosen, D.

Building a Credit Risk Valuation

Framework for Loan Instruments

Algo Research Quarterly, VOL. 3, NO.3 December

2000, 21-46

3. Adams, N. M., Hand,

D. J. An improved measure for comparing diagnostic tests May,1999.

4.

Akhavein, J., Frame,W.S., White, L.

J.,

The Diffusion of financial innovations:An examination of the adoption of small business credit scoring by large banking

organizations

Working Paper Series(Federal Reserves Bank of Atlanta),Apr2001, Vol.2001,Issue 9

5. Allen, L., Delong, G.,

Saunders, A., Issues in the credit risk

modeling of retail markets

Journal of Banking & Finance

28, 2004., 727-752

6. Altman, E.I., Rijken,

H.A. How rating agencies achieve

rating stability

Journal of Banking & Financ

28 (2004) 2679-2714

7.

Altman, E.I., Haldeman, R.G.,

Narayanan, P.

ZETA Analysis, Journal of Banking and Finance

1, 1977, p. 29-54.

8. Altman, E.I., Marco,

G., Varetto, F.

Corporate Disteress Diagnosis: Comparison Using Linear Discriminant Analysis and

Neural Networks (the Italian

Journal of Banking and Finance, 18, 1994, p. 505-529

Experience)

9.

Aguais, S., Forest, L., Rosen, D.

Building a Credit Risk Valuation

Framework for Loan Instruments

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2000, 21-46

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The Diffusion of Financial Innovations:

An Examination of the Adoption of Small Business

Credit Scoring by Large Banking Organizations

Federal Reserve Bank of Atlanta

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Saunders, A. Issues in the Credit Risk

Modeling of Retail Markets February 2003

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