Calibration alternatives to logistic regression and their potential for transferring the dispersion of discriminatory power into uncertainties of probabilities of default
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More about this item
Keywords
Calibration; credit score; cumulative accuracy profile; logistic regression; margin of conservatism; probability of default;All these keywords.
JEL classification:
- G17 - Financial Economics - - General Financial Markets - - - Financial Forecasting and Simulation
- G21 - Financial Economics - - Financial Institutions and Services - - - Banks; Other Depository Institutions; Micro Finance Institutions; Mortgages
- G33 - Financial Economics - - Corporate Finance and Governance - - - Bankruptcy; Liquidation
NEP fields
This paper has been announced in the following NEP Reports:- NEP-BAN-2022-04-18 (Banking)
- NEP-BIG-2022-04-18 (Big Data)
- NEP-ORE-2022-04-18 (Operations Research)
- NEP-RMG-2022-04-18 (Risk Management)
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