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Conditional Generative Modeling for Enhanced Credit Risk Management in Supply Chain Finance

Main:23 Pages
16 Figures
Bibliography:4 Pages
4 Tables
Abstract

The rapid expansion of cross-border e-commerce (CBEC) has created significant opportunities for small and medium-sized enterprises (SMEs), yet financing remains a critical challenge due to SMEs' limited credit histories. Third-party logistics (3PL)-led supply chain finance (SCF) has emerged as a promising solution, leveraging in-transit inventory as collateral. We propose an advanced credit risk management framework tailored for 3PL-led SCF, addressing the dual challenges of credit risk assessment and loan size determination. Specifically, we leverage conditional generative modeling of sales distributions through Quantile-Regression-based Generative Metamodeling (QRGMM) as the foundation for risk estimation. We propose a unified framework that enables flexible estimation of multiple risk measures while introducing a functional risk measure formulation that systematically captures the relationship between these risk measures and varying loan levels, supported by theoretical guarantees. To capture complex covariate interactions in e-commerce sales data, we integrate QRGMM with Deep Factorization Machines (DeepFM). Extensive experiments on synthetic and real-world data validate the efficacy of our model for credit risk assessment and loan size determination. This study represents a pioneering application of generative AI in CBEC SCF risk management, offering a solid foundation for enhanced credit practices and improved SME access to capital.

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@article{zhang2025_2506.15305,
  title={ Conditional Generative Modeling for Enhanced Credit Risk Management in Supply Chain Finance },
  author={ Qingkai Zhang and L. Jeff Hong and Houmin Yan },
  journal={arXiv preprint arXiv:2506.15305},
  year={ 2025 }
}
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