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Comparing ROC Curve based Thresholding Methods in Online Transactions Fraud Detection System using Deep Learning

机译:基于ROC曲线的基于ROC曲线的阈值方法使用深度学习的欺诈检测系统

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Data imbalance is one of the main issues in online transactions fraud detection systems where the majority class (i.e., genuine transactions) dominates the minority class (i.e., fraud transactions). Deep learning-based fraud detection systems have the capability to learn efficiently with imbalanced data. Thresholding with Deep Learning is still understudied. Thresholding or threshold moving alters the decision threshold of the learning model to change its output rather than changing the data distribution or learning of the model. A fraud detection system is considered efficient if it can detect the maximum number of frauds and maintain the overall performance of model. Thus, this paper presents a comparison of three thresholding methods based on Receiver Operating Characteristic (ROC) Curve i.e., Closest to (0,1) criteria, Youden Index (J), max -G-Mean in deep-learning based online transactions fraud detection system. The experimental results show that closest to (0,1) criterion has achieved maximum fraud detection rate i.e. True Positive Rate (TPR) as compared to the other two methods. Hence, selecting the right decisionthresholding method helps in achieving better results.
机译:数据不平衡是在线交易欺诈检测系统的主要问题之一,其中大多数类(即真正交易)占少数级别(即欺诈事务)。基于深度学习的欺诈检测系统具有能够以不平衡的数据有效地学习。仍然可以解读深入学习的门槛。阈值或阈值移动改变了学习模型的判定阈值以改变其输出,而不是改变模型的数据分布或学习。如果它可以检测到欺诈最大数量并保持模型的整体性能,则认为欺诈检测系统是有效的。因此,本文提出了基于接收器操作特征(ROC)曲线的三种阈值方法的比较,即最接近(0,1)标准,YENEN索引(J),MAX -G均值在基于深度学习的在线交易欺诈检测系统。实验结果表明,与另外两种方法相比,最接近(0,1)标准的最大欺诈检测率为I.E.真正的阳性率(TPR)。因此,选择正确的决策方法有助于实现更好的结果。

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