The Advantage of Case-Tailored Information Metrics for the Development of Predictive Models,Calculated Profit in Credit Scoring |
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Authors: | Daniel Chroś cicki,Marcin Chlebus |
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Affiliation: | Faculty of Economic Sciences, University of Warsaw, 00-241 Warsaw, Poland |
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Abstract: | This paper compares model development strategies based on different performance metrics. The study was conducted in the area of credit risk modeling with the usage of diverse metrics, including general-purpose Area Under the ROC curve (AUC), problem-dedicated Expected Maximum Profit (EMP) and the novel case-tailored Calculated Profit (CP). The metrics were used to optimize competitive credit risk scoring models based on two predictive algorithms that are widely used in the financial industry: Logistic Regression and extreme gradient boosting machine (XGBoost). A dataset provided by the American Fannie Mae agency was utilized to conduct the study. In addition to the baseline study, the paper also includes a stability analysis. In each case examined the proposed CP metric that allowed us to achieve the most profitable loan portfolio. |
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Keywords: | credit scoring econometrics machine learning performance metrics model development EMP CP |
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