两阶段动态信用风险评估系统

Rui Li, Shizhe Deng, Jianquan Zhang, Hao He, Yaohui Jin, Jiangang Duan
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摘要

在发展经济学的历史上,信用风险评估一直被认为是金融公司和银行的一个关键因素。最近,人们对使用深度学习方法进行信用风险评估重新产生了兴趣。然而,以往的研究并没有细粒度地处理静态和动态特征,这限制了它们的有效性。因此,在本文中,我们提出了一个使用前馈神经网络(FNN)和递归神经网络(RNN)的两阶段模型。首先,我们设计了聚合层,从静态特征中提取t时刻的代表性信息;其次,通过独特的时刻表示构建客户端的动态特征。动态特征可以通过RNN层学习。在真实数据集上的实验结果表明,该方法优于各种基线。
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A Two-Stage Dynamic Credit Risk Assessment System
Credit risk assessment has been thought of as a critical factor in financial companies and banks in the history of development economics. Recently, there has been renewed interest in credit risk assessment using deep learning methods. However, previous studies have not fine-grained dealt with static and dynamic features, which limits their effectiveness. Thus, in this paper, we present a two-stage model using FeedForward Neural Network(FNN) and Recurrent Neural Network(RNN). First, we design the aggregation layer to extract representative information from the static feature at time T. Second, the distinct moment representation constructs the dynamic features of a client. The dynamic features could be learned by the RNN layer. Experimental results on the real-world dataset show its superiority over various baselines.
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