Attention-based Dynamic Multilayer Graph Neural Networks for Loan Default Prediction

Sahab Zandi, Kamesh Korangi, María Óskarsdóttir, Christophe Mues, Cristián Bravo
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Abstract

Whereas traditional credit scoring tends to employ only individual borrower- or loan-level predictors, it has been acknowledged for some time that connections between borrowers may result in default risk propagating over a network. In this paper, we present a model for credit risk assessment leveraging a dynamic multilayer network built from a Graph Neural Network and a Recurrent Neural Network, each layer reflecting a different source of network connection. We test our methodology in a behavioural credit scoring context using a dataset provided by U.S. mortgage financier Freddie Mac, in which different types of connections arise from the geographical location of the borrower and their choice of mortgage provider. The proposed model considers both types of connections and the evolution of these connections over time. We enhance the model by using a custom attention mechanism that weights the different time snapshots according to their importance. After testing multiple configurations, a model with GAT, LSTM, and the attention mechanism provides the best results. Empirical results demonstrate that, when it comes to predicting probability of default for the borrowers, our proposed model brings both better results and novel insights for the analysis of the importance of connections and timestamps, compared to traditional methods.
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基于注意力的动态多层图神经网络用于贷款违约预测
传统的信用评分往往只采用单个借款人或贷款层面的预测因素,而借款人之间的联系可能会导致违约风险在网络上传播,这一点早已得到认可。在本文中,我们提出了一个信用风险评估模型,该模型采用了由图神经网络和循环神经网络构建的动态多层网络,每一层都反映了不同的网络连接来源。我们利用美国抵押贷款融资机构房地美提供的数据集,在行为信用评分的背景下测试了我们的方法,其中不同类型的连接来自借款人的地理位置及其对抵押贷款提供商的选择。我们提出的模型考虑了这两种类型的联系以及这些联系随时间的演变。我们通过使用自定义关注机制来增强模型,该机制可根据不同时间快照的重要性对其进行加权。在对多种配置进行测试后,一个包含 GAT、LSTM 和注意力机制的模型取得了最佳结果。实证结果表明,在预测借款人的违约概率时,与传统方法相比,我们提出的模型在分析连接和时间戳的重要性方面既能带来更好的结果,又能带来新的见解。
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