Predicting credit default probabilities using machine learning techniques in the face of unequal class distributions
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NEP fields
This paper has been announced in the following NEP Reports:- NEP-BIG-2019-08-26 (Big Data)
- NEP-CMP-2019-08-26 (Computational Economics)
- NEP-PAY-2019-08-26 (Payment Systems and Financial Technology)
- NEP-RMG-2019-08-26 (Risk Management)
- NEP-URE-2019-08-26 (Urban and Real Estate Economics)
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