Identifying Compromised Accounts on Social Media Using Statistical Text Analysis
Abstract. Compromised social media accounts are legitimate user accounts that have been hijacked by a malicious party and can cause various
kinds of damage, which makes the detection of these accounts crucial.
In this work we propose a novel general framework for discovering compromised accounts by utilizing statistical text analysis. The framework
is built on the observation that users will use language that is measurably different from the language that an attacker would use, when the
account is compromised. We use the framework to develop specific algorithms based on language modeling and use the similarity of language
models of users and attackers as features in a supervised learning setup
to identify compromised accounts. Evaluation results on a large Twitter
corpus of over 129 million tweets show promising results of the proposed
approach.
Keywords: Anomaly Detection
· Text Mining
· Social Networks.
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