基于深度学习算法性能评估的信用欺诈识别

Rawaa Ismael
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引用次数: 0

摘要

随着时间的推移,信用卡和金融数据的增长需要信用模型来支持银行做出金融决策。因此,为了避免随着技术发展而增加的互联网交易中的欺诈行为,开发一个高效的欺诈检测系统至关重要。深度学习技术在预测信用卡客户行为方面优于其他机器学习技术,这取决于客户错过付款的概率。为了减少银行的损失,BiLSTM 模型建议在台湾银行信用卡非交易数据集上进行训练。与其他机器学习技术相比,双向 LSTM 在欺诈信用检测方面的准确率达到 98%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Credit Fraud Recognition Based on Performance Evaluation of Deep Learning Algorithm
Over time, the growth of credit cards and the financial data need credit models to support banks in making financial decisions. So, to avoid fraud in internet transactions which increased with the growth of technology it is crucial to develop an efficient fraud detection system. Deep Learning techniques are superior to other Machine Learning techniques in predicting the customer behavior of credit cards depending on the missed payments probability of customers. The BiLSTM model proposed to train on Taiwanese non-transactional dataset for bank credit cards to decrease the losses of banks. The Bidirectional LSTM reached 98% accuracy in fraud credit detection compared with other Machine Learning techniques.
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