Abstract
Due to the detrimental consequences caused by cyberbullying, a great deal of research has been undertaken to propose effective techniques to resolve this reoccurring problem. The research presented in this paper is motivated by the fact that negative emotions can be caused by cyberbullying. This paper proposes cyberbullying detection models that are trained based on contextual, emotions and sentiments features. An Emotion Detection Model (EDM) was constructed using Twitter datasets that have been improved in term of its annotations. Emotions and sentiments were extracted from cyberbullying datasets using EMD and lexicons based. Two cyberbullying datasets from Wikipedia and Twitter respectively were further improved by comprehensive annotation of emotion and sentiments features. The results show that anger, fear and guilt were the major emotions associated with cyberbullying. Subsequently, the extracted emotions were used as features in addition to contextual and sentiments features to train models for cyberbullying detection. The results demonstrate that using emotion features and sentiments have improved the performance of detecting cyberbullying by 0.5 to 0.6 recall. The proposed models also outperformed the state-of-the-art models by a 0.7 f1-score. The main contribution of this work is two-fold, which includes a comprehensive emotion-annotated dataset for cyberbullying detection, and an empirical proof of emotions as effective features for cyberbullying detection.
Original language | English |
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Pages (from-to) | 53907-53918 |
Number of pages | 12 |
Journal | IEEE Access |
Volume | 11 |
DOIs | |
Publication status | Published - 29 May 2023 |
Keywords
- BERT
- Bit error rate
- Blogs
- cyberbullying
- Cyberbullying
- emotion mining
- Feature extraction
- Internet
- Semantics
- sentiment analysis
- Syntactics