Title of article :
MEFUASN: A Helpful Method to Extract Features using Analyzing Social Network for Fraud Detection
Author/Authors :
Keyvanpour, M.R Data Mining Lab - Department of Computer Engineering - Alzahra University - Vanak - Tehran, Iran , Karimi Zandian, Z Department of Computer Engineering - Alzahra University - Vanak - Tehran, Iran
Pages :
22
From page :
213
To page :
234
Abstract :
Fraud detection is one of the ways to cope with damages associated with fraudulent activities that have become common due to the rapid development of the Internet and electronic business. There is a need to propose methods to detect fraud accurately fast. To achieve accuracy, fraud detection methods are required to consider both kinds of features, features based on the user level and features based on the network level. Therefore, in this paper, a method called MEFUASN is proposed to extract features based on social network analysis. After extracting these features, both the obtained features and the features based on user level are combined together to detect fraud using semi-supervised learning. Evaluation results show that using the proposed feature extraction as a pre-processing step in fraud detection improves the accuracy of detection remarkably, while it controls runtime in comparison with other methods.
Keywords :
Semi-supervised Learning , Network Level Features , User Level Features , Social Network Analysis , Fraud Detection , Feature Extraction
Journal title :
Astroparticle Physics
Serial Year :
2019
Record number :
2452621
Link To Document :
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