EFN-SMOTE: An effective oversampling technique for credit card fraud detection by utilizing noise filtering and fuzzy c-means clustering

Q1 Social Sciences
Hadeel Ahmad, B. Kasasbeh, Balqees AL-Dabaybah, Enas F. Rawashdeh
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引用次数: 0

Abstract

Credit card fraud poses a significant challenge for both consumers and organizations worldwide, particularly with the increasing reliance on credit cards for financial transactions. Therefore, it is crucial to establish effective mechanisms to detect credit card fraud. However, the uneven distribution of instances between the two classes in the credit card dataset hinders traditional machine learning techniques, as they tend to prioritize the majority class, leading to inaccurate fraud pre- dictions. To address this issue, this paper focuses on the use of the Elbow Fuzzy Noise Filtering SMOTE (EFN-SMOTE) technique, an oversampling approach, to handle unbalanced data. EFN-SMOTE partitions the dataset into multiple clusters using the Elbow method, applies noise filtering to each cluster, and then employs SMOTE to synthesize new minority instances based on the nearest majority instance to each minority instance, thereby improving the model’s ability to perceive the decision boundary. EFN-SMOTE’s performance was evaluated using an Artificial Neural Network model with four hidden layers, resulting in significant improvements in classification performance, achieving an accuracy of 0.999, precision of 0.998, sensitivity of 0.999, specificity of 0.998, F-measure of 0.999, and G-Mean of 0.999.
EFN-SMOTE:一种利用噪声滤波和模糊c均值聚类的信用卡欺诈检测的有效过采样技术
信用卡欺诈对全世界的消费者和组织都构成了重大挑战,尤其是在金融交易越来越依赖信用卡的情况下。因此,建立有效的信用卡欺诈检测机制至关重要。然而,信用卡数据集中两类实例之间的不均匀分布阻碍了传统的机器学习技术,因为它们倾向于优先考虑大多数类,导致不准确的欺诈预测。为了解决这个问题,本文着重于使用肘模糊噪声滤波SMOTE (EFN-SMOTE)技术,一种过采样方法,来处理不平衡数据。EFN-SMOTE使用肘部方法将数据集划分为多个簇,对每个簇进行噪声滤波,然后利用SMOTE基于离每个少数派实例最近的多数实例合成新的少数派实例,从而提高模型感知决策边界的能力。采用四隐层人工神经网络模型对EFN-SMOTE的分类性能进行评价,结果表明EFN-SMOTE的分类性能有了显著提高,准确率为0.999,精密度为0.998,灵敏度为0.999,特异性为0.998,F-measure为0.999,G-Mean为0.999。
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来源期刊
CiteScore
5.80
自引率
0.00%
发文量
163
审稿时长
8 weeks
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