RisQNet: Rescuing SMEs from Financial Shocks with a Novel Networked-Loan Risk Assessment
RisQNet: Rescuing SMEs from Financial Shocks with a Novel Networked-Loan Risk Assessment
Zhaoyuan Lu, Taijun Li, Jingzhen Zhang, Moyang Liu, Xiang Li, Linyi Cui, Junqi Chen, Zhibin Niu
Proceedings of the Thirty-Third International Joint Conference on Artificial Intelligence
AI for Good. Pages 7385-7393.
https://doi.org/10.24963/ijcai.2024/817
In the face of economic downturns, Small and Medium-sized Enterprises (SMEs) within interconnected networked-loans are vulnerable to cascading debt crises, exacerbated by factors like social media-induced financial shocks. Traditional risk assessment models, which mainly rely on financial data, inadequately predict such crises, as evidenced by the collapse of Silicon Valley Bank in 2023. To address this issue, we developed RisQNet, a model that uses temporal graph networks to incorporate diverse risks, including real-time media influences. This approach not only advances risk prediction through news feature extraction and large language models but also enhances risk management strategies with intuitive visualization tools. Validated on a dataset with a total loan volume of USD 3 trillion, RisQNet outperforms the state-of-the-art baseline and achieves 87.1% of AUC. Our collaborative effort with financial regulators and the SME community underpins the model's development, aligning with the UN SDG 8. RisQNet represents a significant step forward in leveraging AI for financial stability, offering a promising approach to combat the propagation of debt crises in financial networks.
Keywords:
Data Mining: General
Multidisciplinary Topics and Applications: General