English

Cyberbullying Detection in Social Networks Using Deep Learning Based Models; A Reproducibility Study

Computation and Language 2018-12-20 v1 Information Retrieval Social and Information Networks

Abstract

Cyberbullying is a disturbing online misbehaviour with troubling consequences. It appears in different forms, and in most of the social networks, it is in textual format. Automatic detection of such incidents requires intelligent systems. Most of the existing studies have approached this problem with conventional machine learning models and the majority of the developed models in these studies are adaptable to a single social network at a time. In recent studies, deep learning based models have found their way in the detection of cyberbullying incidents, claiming that they can overcome the limitations of the conventional models, and improve the detection performance. In this paper, we investigate the findings of a recent literature in this regard. We successfully reproduced the findings of this literature and validated their findings using the same datasets, namely Wikipedia, Twitter, and Formspring, used by the authors. Then we expanded our work by applying the developed methods on a new YouTube dataset (~54k posts by ~4k users) and investigated the performance of the models in new social media platforms. We also transferred and evaluated the performance of the models trained on one platform to another platform. Our findings show that the deep learning based models outperform the machine learning models previously applied to the same YouTube dataset. We believe that the deep learning based models can also benefit from integrating other sources of information and looking into the impact of profile information of the users in social networks.

Keywords

Cite

@article{arxiv.1812.08046,
  title  = {Cyberbullying Detection in Social Networks Using Deep Learning Based Models; A Reproducibility Study},
  author = {Maral Dadvar and Kai Eckert},
  journal= {arXiv preprint arXiv:1812.08046},
  year   = {2018}
}

Comments

13 Pages, 6 Tables

R2 v1 2026-06-23T06:48:02.484Z