Class balancing framework for credit card fraud detection based on clustering and similarity-based selection (SBS).

Hadeel Ahmad, Bassam Kasasbeh, Balqees Aldabaybah, Enas Rawashdeh
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引用次数: 15

Abstract

Credit card fraud is a growing problem nowadays and it has escalated during COVID-19 due to the authorities in many countries requiring people to use cashless transactions. Every year, billions of Euros are lost due to credit card fraud transactions, therefore, fraud detection systems are essential for financial institutions. As the classes' distribution is not equally represented in the credit card dataset, the machine learning trains the model according to the majority class which leads to inaccurate fraud predictions. For that, in this research, we mainly focus on processing unbalanced data by using an under-sampling technique to get more accurate and better results with different machine learning algorithms. We propose a framework that is based on clustering the dataset using fuzzy C-means and selecting similar fraud and normal instances that have the same features, which guarantees the integrity between the data features.

Abstract Image

Abstract Image

Abstract Image

基于聚类和基于相似度选择的信用卡欺诈检测类平衡框架。
信用卡欺诈如今是一个日益严重的问题,由于许多国家的当局要求人们使用无现金交易,这一问题在COVID-19期间升级了。每年,由于信用卡欺诈交易造成数十亿欧元的损失,因此,欺诈检测系统对金融机构至关重要。由于类的分布在信用卡数据集中没有均匀地表示,机器学习根据大多数类训练模型,从而导致不准确的欺诈预测。为此,在本研究中,我们主要通过使用欠采样技术来处理不平衡数据,从而通过不同的机器学习算法获得更准确和更好的结果。我们提出了一种基于模糊c均值聚类数据集的框架,选择具有相同特征的相似欺诈和正常实例,保证了数据特征之间的完整性。
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