BREE-HD: A Transformer-Based Model to Identify Threats on Twitter
Document Type
Article
Publication Title
IEEE Access
Abstract
With the world transitioning to an online reality and a surge in social media users, detecting online harassment and threats has become more pressing than ever. Gendered cyber-hate causes women significant social, psychological, reputational, economic, and political harm. To tackle this problem, we develop a dataset and propose a transformer-based model to classify tweets into threats or non-threats that are either sexist or non-sexist. We have developed a model to identify sexist and non-sexist threats from a collection of sexist, non-sexist tweets. BREE-HD performs extraordinarily well with an accuracy of 97% when trained on the dataset we developed to detect threats from a collection of derogatory tweets. To provide insight into how BREE-HD makes classifications, we apply explainable A.I. (XAI) concepts to provide a detailed qualitative analysis of our proposed methodology. As an extension of our work, BREE-HD could be used as a part of a system that could detect threats targeting people specifically tailored to classify them in real-time adequately.
First Page
67180
Last Page
67190
DOI
10.1109/ACCESS.2023.3291072
Publication Date
1-1-2023
Recommended Citation
Kumbale, Sinchana; Singh, Smriti; Poornalatha, G.; and Singh, Sanjay, "BREE-HD: A Transformer-Based Model to Identify Threats on Twitter" (2023). Open Access archive. 9059.
https://impressions.manipal.edu/open-access-archive/9059