4.7 Article

On the dynamics of credit history and social interaction features, and their impact on creditworthiness assessment performance

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EXPERT SYSTEMS WITH APPLICATIONS
卷 218, 期 -, 页码 -

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PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.eswa.2023.119599

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Behavioral credit scoring; Application credit scoring; Machine learning; Social network data

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Credit risk management has been using credit scoring models at different stages for over half a century. Social network data has been shown to increase the predictive power of these models, especially when historical data is limited. This study analyzes the dynamics of creditworthiness assessment and finds that credit scoring based on borrowers' history improves performance initially and then stabilizes. The use of social network features adds value to credit scoring for loan applications and throughout the study period for business scoring.
For more than a half-century, credit risk management has used credit scoring models at each of the well-defined stages of credit risk management. Application scoring is used to decide whether to grant a loan or not, while behavioral scoring is used mainly for portfolio management and to take preventive actions in case of default signals. In both cases, social network data has recently been shown to be valuable to increase the predictive power of these models, especially when the borrower's historical data is scarce or not available. This study aims to understand the dynamics of creditworthiness assessment performance and how it is influenced by credit history, repayment behavior, and social network features. To accomplish this, we build up a machine learning classification framework demonstrating its value analyzing 97,000 individuals and companies from the moment they obtained their first loan up to 12 months afterward. Our original and massive dataset allowed us to characterize each borrower according to its credit behavior, and socioeconomic relationships. Our study finds that credit scoring based on borrowers' history improves performance at a decreasing rate during the first six months and then stabilizes. The most notable effect on the performance of credit scoring based on social network features occurs in loan applications; for personal scoring, this effect prevails for approximately six months, while for business scoring, social network features add value throughout the entire study period. These findings are of great value to improve credit risk management and optimize the combined use of both the traditionally exploited information and new alternative data sources.

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