基于交易序列分类的信用评分

Xiaofen Gu, Hao Zhou, Lei Fan
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引用次数: 0

摘要

信用卡和个人贷款申请量的增长促使金融机构需要改进其信用评分方法,以做出明智的决策。本文提出了一种基于交易序列分类的信用评分框架。该框架涉及到一个基于cnn的序列特征提取结构。它既可以应用于原始事务序列,也可以应用于按时间窗口聚合的特征矩阵,以捕获短期和长期的序列特征。其他非顺序的个人特征也被集成到模型中,以帮助做出最终决定。在实验中,分别对基于模型的序列分类、基于特征的序列分类和整个框架的性能进行了评价。我们的序列分类方法以及信用评分框架在真实世界标记应用程序和来自主要支付组织的交易数据的实验中优于其他最先进的方法。
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Credit Scoring Based on Transaction Sequence Classification
The growing volume of credit card and personal loan applications has spurred the need for financial institutions to improve their credit scoring methods to make intelligent decisions. In this paper, we introduce a novel credit scoring framework based on transaction sequence classification. This framework involves a CNN-based structure for sequential feature extraction. It can be applied to both raw transaction sequences and feature matrixes aggregated by time window to capture short-term and long-term sequential features. Other non-sequential personal features are also integrated to the model to help making the final decision. In the experiments, evaluations on the performance of model-based, feature-based sequence classification and the whole framework are done respectively. Our sequence classification method as well as the credit scoring framework outperforms other state-of-art methods in the experiments on real-world labelled application and transaction data from a major payment organization.
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