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Orientador(es)
Resumo(s)
Automatic cyberbullying detection is a task of growing interest, particularly in the Natural Language Processing
and Machine Learning communities. Not only is it challenging, but it is also a relevant need given how social
networks have become a vital part of individuals' lives and how dire the consequences of cyberbullying can be,
especially among adolescents. In this work, we conduct an in-depth analysis of 22 studies on automatic cyberbullying detection, complemented by an experiment to validate current practices through the analysis of two
datasets. Results indicated that cyberbullying is often misrepresented in the literature, leading to inaccurate
systems that would have little real-world application. Criteria concerning cyberbullying definitions and other
methodological concerns seem to be often dismissed. Additionally, there is no uniformity regarding the methodology to evaluate said systems and the natural imbalance of datasets remains an issue. This paper aims to
direct future research on the subject towards a viewpoint that is more coherent with the definition and representation of the phenomenon, so that future systems can have a practical and impactful application.
Recommendations on future works are also made.
Descrição
Palavras-chave
Cyberbullying Automatic cyberbullying detection Natural language processing Machine learning Abusive language Social networks
Contexto Educativo
Citação
Rosa, H., Pereira, N., Ribeiro, R., Ferreira, P. C., Carvalho, J. P., Oliveira, S., Coheur, L., Paulino, P., Veiga Simão, A. M., & Trancoso, I. (2019). Automatic cyberbullying detection: A systematic review. Computers in Human Behavior, 93, 333-345. https://doi.org/10.1016/j.chb.2018.12.021
Editora
Elsevier
