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Feature Extraction Method Based on Social Network Analysis

机译:基于社交网络分析的特征提取方法

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摘要

Due to rapid development of Internet technology and electronic business, fraudulent activities have increased. One of the ways to cope with damages of them is fraud detection. In this field, there is a need for methods accurate and fast. Therefore, a novel and efficient feature extraction method based on social network analysis called FEMBSNA is proposed for fraud detection in banking accounts. In this method, in order to increase accuracy and control runtime in the first step, features based on network level are considered using social network analysis and extracted feature is combined with other features based on user level in the next phase. To evaluate our feature extraction method, we use PCK-means method as a basic method to learn. The results show using the proposed feature extraction as a pre-processing step in fraud detection improves the accuracy remarkably while it controls runtime in comparison with other methods.
机译:由于互联网技术的快速发展和电子商务,欺诈活动增加了。应对他们损害的方法之一是欺诈检测。在该领域,需要准确且快速地进行方法。因此,提出了一种基于社交网络分析的新颖和有效的特征提取方法,称为FemBSNA,用于银行账户中的欺诈检测。在该方法中,为了在第一步中提高精度和控制运行时,使用社交网络分析考虑基于网络级别的特征,并基于下一阶段的用户级别与其他特征组合。为了评估我们的特征提取方法,我们使用PCK-Method方法作为学习的基本方法。结果表明,使用所提出的特征提取作为欺诈检测的预处理步骤,同时控制运行时与其他方法相比,可以显着提高精度。

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