Íntegro: Leveraging Victim Prediction for Robust Fake Account Detection in OSNs

Yazan Boshmaf*, Dionysios Logothetis, Georgos Siganos, Jorge Lería, Jose Lorenzo, Matei Ripeanu*, Konstantin Beznosov*

*Corresponding author for this work

Research output: Contribution to conferencePaperpeer-review

105 Citations (Scopus)

Abstract

Detecting fake accounts in online social networks (OSNs) protects OSN operators and their users from various malicious activities. Most detection mechanisms attempt to predict and classify user accounts as real (i.e., benign, honest) or fake (i.e., malicious, Sybil) by analyzing user-level activities or graph-level structures. These mechanisms, however, are not robust against adversarial attacks in which fake accounts cloak their operation with patterns resembling real user behavior. We herein demonstrate that victims, benign users who control real accounts and have befriended fakes, form a distinct classification category that is useful for designing robust detection mechanisms. First, as attackers have no control over victim accounts and cannot alter their activities, a victim account classifier which relies on user-level activities is relatively harder to circumvent. Second, as fakes are directly connected to victims, a fake account detection mechanism that integrates victim prediction into graph-level structures is more robust against manipulations of the graph. To validate this new approach, we designed Íntegro, a scalable defense system that helps OSNs detect fake accounts using a meaningful a user ranking scheme. Íntegro starts by predicting victim accounts from user-level activities. After that, it integrates these predictions into the graph as weights, so that edges incident to predicted victims have much lower weights than others. Finally, Íntegro ranks user accounts based on a modified random walk that starts from a known real account. Íntegro guarantees that most real accounts rank higher than fakes so that OSN operators can take actions against low-ranking fake accounts. We implemented Íntegro using widely-used, open-source distributed computing platforms in which it scaled nearly linearly. We evaluated Íntegro against SybilRank, the state-of-the-art in fake account detection, using real-world datasets and a large-scale deployment at Tuenti, the largest OSN in Spain. We show that Íntegro significantly outperforms SybilRank in user ranking quality, where the only requirement is to employ a victim classifier is better than random. Moreover, the deployment of Íntegro at Tuenti resulted in up to an order of magnitude higher precision in fake accounts detection, as compared to SybilRank.

Original languageEnglish
DOIs
Publication statusPublished - 2015
Externally publishedYes
Event22nd Annual Network and Distributed System Security Symposium, NDSS 2015 - San Diego, United States
Duration: 8 Feb 201511 Feb 2015

Conference

Conference22nd Annual Network and Distributed System Security Symposium, NDSS 2015
Country/TerritoryUnited States
CitySan Diego
Period8/02/1511/02/15

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