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Linking Bank Clients using Graph Neural Networks Powered by Rich Transactional Data: Extended Abstract

机译:使用由丰富交易数据提供支持的图形神经网络链接银行客户:扩展摘要

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Each day bank clients conduct numerous operations, such as purchasing goods or transferring money to other clients. These interactions can be interpreted as a graph dynamically changing over time. This work focuses on the task of predicting new interactions in the network of bank clients and treats it as a link prediction problem. We propose an architecture for the graph convolutional network to efficiently solve the link prediction problem for this type of data. Our model uses recurrent neural networks to leverage the time-series data in both nodes and edges and effectively scales to the graphs with millions of nodes. We evaluate the model on the data provided for several years by a large European bank. The obtained results show that the model outperforms the existing approaches. The current paper is an extended abstract for the work [5].
机译:银行客户每天都要进行许多操作,例如购买商品或向其他客户转移资金。这些交互可以解释为随时间动态变化的图。这项工作的重点是预测银行客户网络中新交互的任务,并将其视为链接预测问题。我们为图卷积网络提出一种架构,以有效解决此类数据的链接预测问题。我们的模型使用递归神经网络来利用节点和边缘中的时间序列数据,并有效地缩放到具有数百万个节点的图。我们根据一家大型欧洲银行几年来提供的数据评估该模型。所得结果表明该模型优于现有方法。当前论文是该工作的扩展摘要[5]。

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