Publication:
SSNCSE NLP@TamilNLP-ACL2022: Transformer based approach for detection of abusive comment for Tamil language
Bharathi B, Josephine Varsha • @Workshop on Speech and Language Technologies for Dravidian Languages • 01 January 2022
TLDR: The task was to automate the process of identifying abusive comments and classify them into appropriate categories using pre-trained transformer models such as BERT,m-BERT, and XLNET.
Citations: 15
Abstract: Social media platforms along with many other public forums on the Internet have shown a significant rise in the cases of abusive behavior such as Misogynism, Misandry, Homophobia, and Cyberbullying. To tackle these concerns, technologies are being developed and applied, as it is a tedious and time-consuming task to identify, report and block these offenders. Our task was to automate the process of identifying abusive comments and classify them into appropriate categories. The datasets provided by the DravidianLangTech@ACL2022 organizers were a code-mixed form of Tamil text. We trained the datasets using pre-trained transformer models such as BERT,m-BERT, and XLNET and achieved a weighted average of F1 scores of 0.96 for Tamil-English code mixed text and 0.59 for Tamil text.
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