Credit Risk Analysis Using Machine and Deep Learning Models

P. Addo, D. Guégan, Bertrand K. Hassani
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引用次数: 188

Abstract

Due to the hyper technology associated to Big Data, data availability and computing power, most banks or lending financial institutions are renewing their business models. Credit risk predictions, monitoring, model reliability and effective loan processing are key to decision making and transparency. In this work, we build binary classifiers based on machine and deep learning models on real data in predicting loan default probability. The top 10 important features from these models are selected and then used in the modelling process to test the stability of binary classifiers by comparing performance on separate data. We observe that tree-based models are more stable than models based on multilayer artificial neural networks. This opens several questions relative to the intensive used of deep learning systems in the enterprises.
使用机器和深度学习模型的信用风险分析
由于与大数据、数据可用性和计算能力相关的超技术,大多数银行或贷款金融机构正在更新其业务模式。信用风险预测、监测、模型可靠性和有效的贷款处理是决策和透明度的关键。在这项工作中,我们基于机器和深度学习模型在真实数据上构建二元分类器来预测贷款违约概率。从这些模型中选择出最重要的10个特征,然后在建模过程中使用,通过比较在单独数据上的性能来测试二元分类器的稳定性。我们观察到基于树的模型比基于多层人工神经网络的模型更稳定。这就提出了几个与企业中深度学习系统的密集使用有关的问题。
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