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Fraud Detection in Credit Card Data using Unsupervised Machine Learning Based Scheme

机译:使用基于无监督机器学习的方案对信用卡数据进行欺诈检测

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Development of communication technologies and e-commerce has made the credit card as the most common technique of payment for both online and regular purchases. So, security in this system is highly expected to prevent fraud transactions. Fraud transactions in credit card data transaction are increasing each year. In this direction, researchers are also trying the novel techniques to detect and prevent such frauds. However, there is always a need of some techniques that should precisely and efficiently detect these frauds. This paper proposes a scheme for detecting frauds in credit card data which uses a Neural Network (NN) based unsupervised learning technique. Proposed method outperforms the existing approaches of Auto Encoder (AE), Local Outlier Factor (LOF), Isolation Forest (IF) and K-Means clustering. Proposed NN based fraud detection method performs with 99.87% accuracy whereas existing methods AE, IF, LOF and K Means gives 97%, 98%, 98% and 99.75% accuracy respectively.
机译:通信技术和电子商务的发展已使信用卡成为在线和常规购买中最常用的支付技术。因此,高度期望该系统中的安全性可以防止欺诈交易。信用卡数据交易中的欺诈交易逐年增加。在这个方向上,研究人员还尝试使用新颖的技术来检测和防止此类欺诈。但是,始终需要一些技术来准确,有效地检测这些欺诈行为。本文提出了一种基于神经网络(NN)的无监督学习技术来检测信用卡数据中的欺诈行为。提出的方法优于自动编码器(AE),局部离群因子(LOF),隔离林(IF)和K-Means聚类的现有方法。提出的基于NN的欺诈检测方法的准确率达到99.87%,而现有方法AE,IF,LOF和K Means的准确率分别为97%,98%,98%和99.75%。

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