Network Based Scoring Models to Improve Credit Risk Management in Peer to Peer Lending Platforms
Version
Published
Date Issued
2019
Author(s)
Type
Article
Language
English
Abstract
Financial intermediation has changed extensively over the course of the last two decades. One of the most significant change has been the emergence of FinTech. In the context of credit services, fintech peer to peer lenders have introduced many opportunities, among which improved speed, better customer experience, and reduced costs. However, peer-to-peer lending platforms lead to higher risks, among which higher credit risk: not owned by the lenders, and systemic risks: due to the high interconnectedness among borrowers generated by the platform. This calls for new and more accurate credit risk models to protect consumers and preserve financial stability. In this paper we propose to enhance credit risk accuracy of peer-to-peer platforms by leveraging topological information embedded into similarity networks, derived from borrowers' financial information. Topological coefficients describing borrowers' importance and community structures are employed as additional explanatory variables, leading to an improved predictive performance of credit scoring models.
Subjects
HG Finance
Publisher DOI
Journal
Frontiers in Artificial Intelligence
ISSN
2624-8212
Organization
Volume
2
Publisher
Frontiers Research Foundation
Submitter
Hadji MishevaB
Citation apa
Giudici, P., Hadji Misheva, B., & Spelta, A. (2019). Network Based Scoring Models to Improve Credit Risk Management in Peer to Peer Lending Platforms. In Frontiers in Artificial Intelligence (Vol. 2). Frontiers Research Foundation. https://doi.org/10.24451/arbor.17298
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frai-02-00003.pdf
License
Attribution 4.0 International
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published
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