Measuring the model risk-adjusted performance of machine learning algorithms in credit default prediction
Year of publication: |
2022
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Authors: | Alonso, Andrés ; Carbó Martínez, José Manuel |
Published in: |
Financial innovation : FIN. - Heidelberg : SpringerOpen, ISSN 2199-4730, ZDB-ID 2824759-0. - Vol. 8.2022, Art.-No. 70, p. 1-35
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Subject: | Artificial intelligence | Bias | Credit risk | Internal ratings based model | Interpretability | IRB model | Machine learning | Natural language processing | NLP | Künstliche Intelligenz | Kreditrisiko | Prognoseverfahren | Forecasting model | Kreditwürdigkeit | Credit rating | Algorithmus | Algorithm | Theorie | Theory |
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