Deep learning approaches for Bengali cyberbullying cetection on social media: a comparative study of BiLSTM, BiGRU and BERT models
Date
2023-09Publisher
Brac UniversityAuthor
Fahim, Kaji Mehedi HasanNyla, Nasita
Saha, Priti
Akter, Mst. Shamima
Shourav, Musfiqur Rahman
Metadata
Show full item recordAbstract
As technology becomes more accessible, it is now much easier than ever to abuse
someone by misusing it. Usually, people use slang or absurd language with the goal
of bullying, harassing, and harming someone by using social media. Moreover, these
types of cyberbullying activities are more widespread among teenagers and young
people despite knowing the fact that these may break someone down emotionally and
may lead them towards suicidal activities. Hence, our goal is to detect cyberbullying
happening on social media in the Bengali language with the help of state-of-theart
deep learning and Natural Language Processing (NLP) techniques. We have
examined with 3 different algorithms such as Bi-LSTM, Bi-GRU and BERT for both
multiclass and binary classification. For both binary and multiclass classifications,
BERT outperformed the other two models in terms of performance with the f1 score
of 0.89 for binary and 0.85 for multiclass classification. Our proposed state-of-theart
transformer model BERT will detect whether a message or comment is sent
to harass someone or not and could help to take immediate action against them.
Therefore, our research might have a positive impact on changing the social media
environment by detecting hate speeches and bullying messages.