2021
DOI: 10.48550/arxiv.2112.10078
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Managing dataset shift by adversarial validation for credit scoring

Abstract: Dataset shift is common in credit scoring scenarios, and the inconsistency between the distribution of training data and the data that actually needs to be predicted is likely to cause poor model performance. However, most of the current studies do not take this into account, and they directly mix data from different time periods when training the models. This brings about two problems. Firstly, there is a risk of data leakage, i.e., using future data to predict the past. This can result in inflated results in… Show more

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