基于LSTM-Focalloss的银行欺诈交易检测研究

Feiyan Zhan
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引用次数: 1

摘要

银行欺诈交易给消费者和银行带来了巨大的损失,原有的基于规则的欺诈检测方法已经不适合各种新的欺诈方式。针对银行欺诈交易是典型的非平衡数据分类问题,建立了DNN和LSTM两种神经网络模型,并采用新型损失函数Focalloss在Kaggle的TESTIMON数据集上进行训练和测试。测试结果表明,LSTM-Focalloss的网络检测欺诈交易的能力明显高于其他方法,表明该网络模型在检测银行欺诈交易方面非常有效。
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Research on bank fraud transaction detection based on LSTM-Focalloss
Bank fraud transaction has brought huge losses to consumers and banks, and the original rule-based fraud detection method is not suitable for various new fraud way. According to the fact that bank fraud transaction is a typical unbalanced data classification problem, two neural network models of DNN and LSTM are established, with a new type loss function, Focalloss is used to train and test on the Kaggle's TESTIMON Dataset. As the test results, LSTM-Focalloss's network was able to detect fraud transactions significantly higher than other methods, indicating that this network model is very effective in detecting bank fraud transactions.
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