Authors
Yi-Chun Chang, Kuan-Ting Lai, Seng-Cho T Chou, Wei-Chuan Chiang, Yuan-Chen Lin
Publication date
2021/1/13
Journal
Data Technologies and Applications
Volume
55
Issue
1
Pages
1-18
Publisher
Emerald Publishing Limited
Description
Purpose
Telecommunication (telecom) fraud is one of the most common crimes and causes the greatest financial losses. To effectively eradicate fraud groups, the key fraudsters must be identified and captured. One strategy is to analyze the fraud interaction network using social network analysis. However, the underlying structures of fraud networks are different from those of common social networks, which makes traditional indicators such as centrality not directly applicable. Recently, a new line of research called deep random walk has emerged. These methods utilize random walks to explore local information and then apply deep learning algorithms to learn the representative feature vectors. Although effective for many types of networks, random walk is used for discovering local structural equivalence and does not consider the global properties of nodes.
Design/methodology/approach
The authors proposed a …
Total citations
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