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Compromised account detection using authorship verification: a novel approach

2022-06-02 14:54:27
Forough Farazmanesh, Fateme Foroutan, Amir Jalaly Bidgoly

Abstract

Compromising legitimate accounts is a way of disseminating malicious content to a large user base in Online Social Networks (OSNs). Since the accounts cause lots of damages to the user and consequently to other users on OSNs, early detection is very important. This paper proposes a novel approach based on authorship verification to identify compromised twitter accounts. As the approach only uses the features extracted from the last user's post, it helps to early detection to control the damage. As a result, the malicious message without a user profile can be detected with satisfying accuracy. Experiments were constructed using a real-world dataset of compromised accounts on Twitter. The result showed that the model is suitable for detection due to achieving an accuracy of 89%.

Abstract (translated)

URL

https://arxiv.org/abs/2206.03581

PDF

https://arxiv.org/pdf/2206.03581.pdf


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