Aggression and "hate speech" in communication of media users: analysis
of control capabilities
- URL: http://arxiv.org/abs/2208.12170v1
- Date: Thu, 25 Aug 2022 15:53:32 GMT
- Title: Aggression and "hate speech" in communication of media users: analysis
of control capabilities
- Authors: Varvara Kazhberova, Alexander Chkhartishvili, Dmitry Gubanov, Ivan
Kozitsin, Evgeny Belyavsky, Denis Fedyanin, Sergey Cherkasov, Dmitry Meshkov
- Abstract summary: Authors studied the possibilities of mutual influence of users in new media.
They found a high level of aggression and hate speech when discussing an urgent social problem - measures for COVID-19 fighting.
Results can be useful for developing media content in a modern digital environment.
- Score: 50.591267188664666
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Analyzing the possibilities of mutual influence of users in new media, the
researchers found a high level of aggression and hate speech when discussing an
urgent social problem - measures for COVID-19 fighting. This fact determined
the central aspect of the research at the next stage and the central topic of
the proposed article. The first chapter of the article is devoted to the
characteristics of the prerequisites of the undertaken research, its main
features. The following chapters include methodological features of the study,
theoretical substantiation of the concepts of aggression and hate speech,
identification of systemic connections of these concepts with other
characteristics of messages. The result was the creating of a mathematical
aggression growth model and the analysis of its manageability using basic
social media strategies. The results can be useful for developing media content
in a modern digital environment.
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