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HFTCRNet:用于银行间信用评级和风险评估的分层融合Transformer

HFTCRNet: Hierarchical Fusion Transformer for Interbank Credit Rating and Risk Assessment.

作者信息

Li Jiangtong, Zhou Ziyuan, Zhang Jingkai, Cheng Dawei, Jiang Changjun

出版信息

IEEE Trans Neural Netw Learn Syst. 2025 Jul;36(7):13006-13020. doi: 10.1109/TNNLS.2024.3475484.

Abstract

As a prominent application of deep neural networks in financial literature, bank credit ratings play a pivotal role in safeguarding global economic stability and preventing crises. In the contemporary financial system, interconnectivity among banks has reached unprecedented levels. However, many existing credit risk models continue to assess each bank independently, resulting in inevitable suboptimal performance. Thus, developing advanced neural networks to model intricate temporal dynamics and interconnected relationships in the banking system is essential for an effective credit rating and risk assessment learning system. To this end, we propose a novel hierarchical fusion transformer for interbank credit rating and risk assessment (HFTCRNet), which includes the long-term temporal transformer (LT3) module, short-term cross-graph transformer (STCGT) module, attentive risk contagion transformer (ARCT) module, and hierarchical fusion transformer (HFT) module to capture the long-term growth trajectories of banks, the short-term interbank network variance, the potential propagation of risks within interbank network, and integrate these information hierarchically. We further develop an interbank credit rating dataset, encompassing quarterly financial data, interbank lending networks, and key indicators such as credit ratings and systemic risk (SRISK) for 4548 banks from 2016Q1 to 2023Q1. Notably, we also adapt the minimum density algorithm to stabilize the interbank loan network over time, aiding in the analysis of long-term and short-term network effects. Our learning system uses semi-supervised learning to handle labels of varying sparsity, integrating credit ratings and SRISK for a comprehensive assessment of individual bank creditworthiness and systemic interbank risk. Extensive experimental results on our interbank dataset show that HFTCRNet not only outperforms all the baselines in terms of credit rating accuracy but also can evaluate the systemic risk within the interbank network. Code will be available at: https://github.com/AI4Risk/HFTCRNet.

摘要

作为深度神经网络在金融文献中的一项突出应用,银行信用评级在维护全球经济稳定和预防危机方面发挥着关键作用。在当代金融体系中,银行之间的相互关联性已达到前所未有的水平。然而,许多现有的信用风险模型仍在独立评估每家银行,导致不可避免的次优表现。因此,开发先进的神经网络来对银行系统中复杂的时间动态和相互关联关系进行建模,对于有效的信用评级和风险评估学习系统至关重要。为此,我们提出了一种用于银行间信用评级和风险评估的新型分层融合变压器(HFTCRNet),它包括长期时间变压器(LT3)模块、短期跨图变压器(STCGT)模块、注意力风险传染变压器(ARCT)模块和分层融合变压器(HFT)模块,以捕捉银行的长期增长轨迹、银行间网络的短期方差、银行间网络内风险的潜在传播,并对这些信息进行分层整合。我们进一步开发了一个银行间信用评级数据集,涵盖了2016年第一季度至2023年第一季度4548家银行的季度财务数据、银行间借贷网络以及信用评级和系统性风险(SRISK)等关键指标。值得注意的是,我们还采用了最小密度算法来随时间稳定银行间贷款网络,有助于分析长期和短期网络效应。我们的学习系统使用半监督学习来处理不同稀疏程度的标签,整合信用评级和SRISK以全面评估单个银行的信用状况和银行间系统性风险。在我们的银行间数据集上的大量实验结果表明,HFTCRNet不仅在信用评级准确性方面优于所有基线,还能够评估银行间网络内的系统性风险。代码将在以下网址获取:https://github.com/AI4Risk/HFTCRNet。

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