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Published May 28, 2020 | Version v1
Conference paper Open

User Identity Linkage in Social Media Using Linguistic and Social Interaction Features

  • 1. Information Technologies Institute, Centre for Research and Technology Hellas
  • 2. Pompeu Fabra University
  • 3. Pompeu Fabra University, ICREA

Description

Social media users often hold several accounts in their effort to multiply the spread of their thoughts, ideas, and viewpoints. In the particular case of objectionable content, users tend to create multiple accounts to bypass the combating measures enforced by social media platforms and thus retain their online identity even if some of their accounts are suspended. User identity linkage aims to reveal social media accounts likely to belong to the same natural person so as to prevent the spread of abusive/illegal activities. To this end, this work proposes a machine learning-based detection model, which uses multiple attributes of users' online activity in order to identify whether two or more virtual identities belong to the same real natural person. The models efficacy is demonstrated on two cases on abusive and terrorism-related Twitter content.

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User_Identity_Linkage_in_Social_Media_WebSci20.pdf.pdf

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Additional details

Funding

PREVISION – Prediction and Visual Intelligence for Security Information 833115
European Commission
CONNEXIONs – InterCONnected NEXt-Generation Immersive IoT Platform of Crime and Terrorism DetectiON, PredictiON, InvestigatiON, and PreventiON Services 786731
European Commission