A Multimodal Approach to SME Credit Scoring Integrating Transaction and Ownership Networks
- URL: http://arxiv.org/abs/2510.09407v1
- Date: Fri, 10 Oct 2025 14:02:05 GMT
- Title: A Multimodal Approach to SME Credit Scoring Integrating Transaction and Ownership Networks
- Authors: Sahab Zandi, Kamesh Korangi, Juan C. Moreno-Paredes, María Óskarsdóttir, Christophe Mues, Cristián Bravo,
- Abstract summary: Small and Medium-sized Enterprises (SMEs) are known to play a vital role in economic growth, employment, and innovation.<n>They tend to face significant challenges in accessing credit due to limited financial histories, collateral constraints, and exposure to macroeconomic shocks.<n>This paper presents and tests a novel approach for modelling the risk of SME credit using a unique large data set of SME loans provided by a prominent financial institution.
- Score: 1.5195875673410624
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Small and Medium-sized Enterprises (SMEs) are known to play a vital role in economic growth, employment, and innovation. However, they tend to face significant challenges in accessing credit due to limited financial histories, collateral constraints, and exposure to macroeconomic shocks. These challenges make an accurate credit risk assessment by lenders crucial, particularly since SMEs frequently operate within interconnected firm networks through which default risk can propagate. This paper presents and tests a novel approach for modelling the risk of SME credit, using a unique large data set of SME loans provided by a prominent financial institution. Specifically, our approach employs Graph Neural Networks to predict SME default using multilayer network data derived from common ownership and financial transactions between firms. We show that combining this information with traditional structured data not only improves application scoring performance, but also explicitly models contagion risk between companies. Further analysis shows how the directionality and intensity of these connections influence financial risk contagion, offering a deeper understanding of the underlying processes. Our findings highlight the predictive power of network data, as well as the role of supply chain networks in exposing SMEs to correlated default risk.
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