Friend or Foe? Fake Profile Identification in Online Social Networks
Michael Fire, Dima Kagan, Aviad Elyashar, and Yuval Elovici

TL;DR
This paper presents a multi-layered software tool for Facebook that enhances user privacy by identifying potential threats, expanding privacy settings, and alerting about risky applications, supported by machine learning classifiers to detect fake profiles.
Contribution
The paper introduces a novel Facebook privacy protection software with three layers and machine learning-based fake profile detection, backed by real user data and analysis.
Findings
High user engagement with the software across 20+ countries
Effective classifiers predicting high-risk fake profiles
Significant reduction in risky applications on user profiles
Abstract
The amount of personal information unwillingly exposed by users on online social networks is staggering, as shown in recent research. Moreover, recent reports indicate that these networks are infested with tens of millions of fake users profiles, which may jeopardize the users' security and privacy. To identify fake users in such networks and to improve users' security and privacy, we developed the Social Privacy Protector software for Facebook. This software contains three protection layers, which improve user privacy by implementing different methods. The software first identifies a user's friends who might pose a threat and then restricts this "friend's" exposure to the user's personal information. The second layer is an expansion of Facebook's basic privacy settings based on different types of social network usage profiles. The third layer alerts users about the number of installed…
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Taxonomy
TopicsInternet Traffic Analysis and Secure E-voting · Privacy, Security, and Data Protection · Spam and Phishing Detection
