What can we learn from what a machine has learned? : interpreting credit risk machine learning models
Year of publication: |
2021
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Authors: | Bharodia, Nehalkumar ; Chen, Wei |
Published in: |
The journal of risk model validation. - London : Infopro Digital, ISSN 1753-9579, ZDB-ID 2316764-6. - Vol. 15.2021, 2, p. 1-22
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Subject: | machine learning | credit scoring | model interpretability | feature importance | Kreditrisiko | Credit risk | Künstliche Intelligenz | Artificial intelligence | Kreditwürdigkeit | Credit rating | Lernprozess | Learning process | Lernen | Learning | Theorie | Theory |
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