| Literature DB >> 33733145 |
Niklas Bussmann1,2, Paolo Giudici3, Dimitri Marinelli1, Jochen Papenbrock1.
Abstract
The paper proposes an explainable AI model that can be used in fintech risk management and, in particular, in measuring the risks that arise when credit is borrowed employing peer to peer lending platforms. The model employs Shapley values, so that AI predictions are interpreted according to the underlying explanatory variables. The empirical analysis of 15,000 small and medium companies asking for peer to peer lending credit reveals that both risky and not risky borrowers can be grouped according to a set of similar financial characteristics, which can be employed to explain and understand their credit score and, therefore, to predict their future behavior.Entities:
Keywords: credit risk management; explainable AI; financial technologies; logistic regression; peer to peer lending; predictive models
Year: 2020 PMID: 33733145 PMCID: PMC7861223 DOI: 10.3389/frai.2020.00026
Source DB: PubMed Journal: Front Artif Intell ISSN: 2624-8212