Feb. 9, 2024, 5:44 a.m. | Christophe Hurlin Christophe P\'erignon S\'ebastien Saurin

cs.LG updates on arXiv.org arxiv.org

In credit markets, screening algorithms aim to discriminate between good-type and bad-type borrowers. However, when doing so, they can also discriminate between individuals sharing a protected attribute (e.g. gender, age, racial origin) and the rest of the population. This can be unintentional and originate from the training dataset or from the model itself. We show how to formally test the algorithmic fairness of scoring models and how to identify the variables responsible for any lack of fairness. We then use …

age aim algorithms credit cs.lg dataset fairness gender good markets population q-fin.rm rest scoring screening stat.ml training type

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