A Relational Graph Convolution Network-Based Smart Risk Recognition Model for Financial Transactions

Li Zhang, Junmiao Deng
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Abstract

The financial transaction relationships between existing entities are complex and diverse. In this situation, traditional risk control methods mainly ignored such complex and implicit relationship characteristics, remaining difficult to cope with complex and ever-changing financial risks. To address this issue, this paper proposes a novel relational graph convolution network (GCN)-based smart risk recognition model for financial transactions. Firstly, the classic GCN is simplified based on spatiotemporal effect. Then, feature extraction is conducted for financial transaction data, and a transformer encoder-based GCN model is proposed for risk recognition. The proposed model in this work is named as graph transformer graph convolutional network (GT-GCN) for short. In addition, fuzzy evaluation method is added into it. Finally, some experiments are conducted on real-world financial transaction data to make validation for the proposed GT-GCN. The research results indicate that the GT-GCN can not only effectively identify risks in financial transactions, but also has high accuracy and predictive ability. The application of GT-GCN to actual datasets also has good scalability and adaptability, and it can be resiliently extended into many other fields.
基于关系图卷积网络的金融交易智能风险识别模型
现有实体之间的金融交易关系复杂多样。在这种情况下,传统的风险控制方法主要忽略了这种复杂而隐含的关系特征,仍然难以应对复杂多变的金融风险。针对这一问题,本文提出了一种基于关系图卷积网络(GCN)的新型金融交易智能风险识别模型。首先,基于时空效应对经典的 GCN 进行简化。然后,对金融交易数据进行特征提取,并提出基于变换器编码器的 GCN 风险识别模型。本文提出的模型简称为图变换器图卷积网络(GT-GCN)。此外,还加入了模糊评价方法。最后,在真实的金融交易数据上进行了一些实验,对提出的 GT-GCN 进行验证。研究结果表明,GT-GCN 不仅能有效识别金融交易中的风险,而且具有较高的准确性和预测能力。GT-GCN 在实际数据集上的应用还具有良好的可扩展性和适应性,可以灵活地扩展到许多其他领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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