Detection for user impersonation attacks in mobile social networks based on high-order Markov chains
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Affiliation
Nanchang Business CollegeUniversity of South-Eastern Norway
Norwegian Research Center
IDEAS NCBR, Warsaw
University of Bedfordshire
Issue Date
2025-03-31Subjects
mobile social networksuser impersonation attacks
Markov chains
Subject Categories::G920 Others in Computing Sciences
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In security defense of MSN (MSN), attackers often impersonate themselves as other users, making it difficult to detect network user attacks based on user behavior. Multi-order Markov chains can consider the front-to-back correlation of user behavior, thereby more accurately identifying disguised users. Therefore, this paper proposes a user impersonation attack detection method based on multi-order Markov chains. First, the relevance coefficient method is used to determine the order of the multi-order Markov chain, and by defining appropriate multi-order Markov chain states to capture key features in user behavior, a multi-order Markov chain is established. Then, through the multi-order Markov chain combined with Shell commands, the normal behavior profile of legitimate users is established, and based on this, the probability of occurrence of the state sequence is calculated to complete the detection of userimpersonation attacks. The experimental results show that the similarity between the results of the proposed method and the actual situation in detecting impersonation attacks is more than 97%, indicating that this method can detect MSN user impersonation attacks with high accuracy.Citation
Gong W, Huang Y, Djenouri Y, Moqurrab SA (2025) 'Detection for user impersonation attacks in mobile social networks based on high-order Markov chains', Mobile Networks and Applications, (), pp.-.Publisher
SpringerJournal
Mobile Networks and ApplicationsAdditional Links
https://link.springer.com/article/10.1007/s11036-025-02449-6Type
ArticleLanguage
enISSN
1383-469XEISSN
1572-8153ae974a485f413a2113503eed53cd6c53
10.1007/s11036-025-02449-6
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