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                                       Details van artikel 23 van 60 gevonden artikelen
 
 
  Detecting cyberbullying in social networks using multi-agent system
 
 
Titel: Detecting cyberbullying in social networks using multi-agent system
Auteur: Nahar, Vinita
Li, Xue
Zhang, Hao Lan
Pang, Chaoyi
Verschenen in: Web intelligence and agent systems
Paginering: Jaargang 12 (2014) nr. 4 pagina's 375-388
Jaar: 2014-11-24
Inhoud: State-of-the-art studies on cyberbullying detection, using text classification, predominantly take it for granted that streaming text can be completely labelled. However, the rapid growth of unlabelled data generated in real time from online content renders this virtually impossible. In this paper, we propose a session-based framework for automatic detection of cyberbullying within the large volume of unlabelled streaming text. Given that the streaming data from Social Networks arrives in large volume at the server system, we incorporate an ensemble of one-class classifiers in the session-based framework. System uses Multi-Agent distributed environment to process streaming data from multiple social network sources. The proposed strategy tackles real world situations, where only a few positive instances of cyberbullying are available for initial training. Our main contribution in this paper is to automatically detect cyberbullying in real world situations, where labelled data is not readily available. Initial results indicate the suggested approach is reasonably effective for detecting cyberbullying automatically on social networks. The experiments indicate that the ensemble learner outperforms the single window and fixed window approaches, while the learning process is based on positive and unlabelled data only, no negative data is available for training.
Uitgever: IOS Press
Bronbestand: Elektronische Wetenschappelijke Tijdschriften
 
 

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