Abstract

Due to the significant increase in Internet activity since the COVID-19 epidemic, many informal, unstructured, offensive, and even misspelled textual content has been used for online communication through various social media. The Bengali and Banglish(Bengali words written in English format) offensive texts have recently been widely used to harass and criticize people on various social media. Our deep excavation reveals that limited work has been done to identify offensive Bengali texts. In this study, we have engineered a detection mechanism using natural language processing to identify Bengali and Banglish offensive messages in social media that could abuse other people. First, different classifiers have been employed to classify the offensive text as baseline classifiers from real-life datasets. Then, we applied boosting algorithms based on baseline classifiers. AdaBoost is the most effective ensemble method called adaptive boosting, which enhances the outcomes of the classifiers. The long short-term memory (LSTM) model is used to eliminate long-term dependency problems when classifying text, but overfitting problems occur. AdaBoost has strong forecasting ability and overfitting problem does not occur easily. By considering these two powerful and diverse models, we propose L-Boost, the modified AdaBoost algorithm using bidirectional encoder representations from transformers (BERT) with LSTM models. We tested the L-Boost model on three separate datasets, including the BERT pre-trained word-embedding vector model. We find our proposed L-Boost’s efficacy better than all the baseline classification algorithms reaching an accuracy of 95.11%.

Highlights

  • D URING the COVID-19 global pandemic, people have been protecting themselves by maintaining as much social distance as possible and communicating virtually with each other

  • bidirectional encoder representations from transformers (BERT) performs significantly better than other existing natural language processing (NLP) models, and has some limitations

  • METHODOLOGY we propose an offensive text detection process using social media datasets and different classification algorithms

Read more

Summary

Introduction

D URING the COVID-19 global pandemic, people have been protecting themselves by maintaining as much social distance as possible and communicating virtually with each other. For this purpose, they have been engaging in various social media such as Facebook, TikTok, FaceTime, WhatsApp, Zoom, etc., and have been in constant touch with others. VOLUME 4, 2016 as online harassment or hate speech, since 2018 They found that hate speech on Twitter increased by 900% and traffic on several hate sites increased by 200% during COVID-19. Bengali language processing research is not as rich as other languages, such as English, Arabic, or European languages.

Objectives
Methods
Findings
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call