A Framework for Detecting Intentions of Criminal Acts in Social Media: A Case Study on Twitter

Criminals use online social networks for various activities by including communication, planning, and execution of criminal acts. They often employ ciphered posts using slang expressions, which are restricted to specific groups. Although literature shows advances in analysis of posts in natural lang...

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Bibliographic Details
Published in:Information (Basel) Vol. 11; no. 3; p. 154
Main Authors: Resende de Mendonça, Ricardo, Felix de Brito, Daniel, de Franco Rosa, Ferrucio, dos Reis, Júlio Cesar, Bonacin, Rodrigo
Format: Journal Article
Language:English
Published: MDPI AG 01-03-2020
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Summary:Criminals use online social networks for various activities by including communication, planning, and execution of criminal acts. They often employ ciphered posts using slang expressions, which are restricted to specific groups. Although literature shows advances in analysis of posts in natural language messages, such as hate discourses, threats, and more notably in the sentiment analysis; research enabling intention analysis of posts using slang expressions is still underexplored. We propose a framework and construct software prototypes for the selection of social network posts with criminal slang expressions and automatic classification of these posts according to illocutionary classes. The developed framework explores computational ontologies and machine learning (ML) techniques. Our defined Ontology of Criminal Expressions represents crime concepts in a formal and flexible model, and associates them with criminal slang expressions. This ontology is used for selecting suspicious posts and decipher them. In our solution, the criminal intention in written posts is automatically classified relying on learned models from existing posts. This work carries out a case study to evaluate the framework with 8,835,290 tweets. The obtained results show its viability by demonstrating the benefits in deciphering posts and the effectiveness of detecting user’s intention in written criminal posts based on ML.
ISSN:2078-2489
2078-2489
DOI:10.3390/info11030154