Temporal Behavioural Analysis of Extremists on Social Media: A Machine Learning Based Approach

Autor: Farhad Oroumchian, Ajala Imene, Sujith Samuel Mathew, Rand Yasin, Saad Lutfi, May El Barachi
Rok vydání: 2021
Předmět:
Zdroj: 2021 6th International Conference on Smart and Sustainable Technologies (SpliTech).
DOI: 10.23919/splitech52315.2021.9566446
Popis: Public opinion is of critical importance to businesses and governments. It represents the collective opinion and prevalent views about a certain topic, policy, or issue. Extreme public opinion consists of extreme views held by individuals that advocate and spread radical ideas for the purpose of radicalizing others. while the proliferation of social media gives unprecedented reach and visibility and a platform for freely expressing public opinion, social media fora can also be used for spreading extreme views, manipulating public opinions, and radicalizing others. In this work, we leverage data mining and analytics techniques to study extreme public opinion expressed using social medial. A dataset of 259,904 tweets posted between 21/02/2016 and 01/05/2021 was collected in relation to extreme nationalism, hate speech, and supremacy. The collected data was analyzed using a variety to techniques, including sentiment analysis, named entity recognition, social circle analysis, and opinion leaders' identification, and results related to an American politician and an American right-wing activist were presented. The results obtained are very promising and open the door to the ability to monitor the evolution of extreme views and public opinion online.
Databáze: OpenAIRE