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BERT-BU12 Hate Speech Detection using Bidirectional Encoder-Decoder
Publication year - 2022
Publication title -
international journal of system dynamics applications
Language(s) - English
Resource type - Journals
eISSN - 2160-9799
pISSN - 2160-9772
DOI - 10.4018/ijsda.20220801oa04
Subject(s) - computer science , automatic summarization , voice activity detection , encoder , task (project management) , recall , word (group theory) , artificial intelligence , speech recognition , transfer of learning , machine learning , language model , natural language processing , speech processing , linguistics , philosophy , management , economics , operating system
In the recent times transfer learning models have known to exhibited good results in the area of text classification for question-answering, summarization, next word prediction but these learning models have not been extensively used for the problem of hate speech detection yet. We anticipate that these networks may give better results in another task of text classification i.e. hate speech detection. This paper introduces a novel method of hate speech detection based on the concept of attention networks using the BERT attention model. We have conducted exhaustive experiments and evaluation over publicly available datasets using various evaluation metrics (precision, recall and F1 score). We show that our model outperforms all the state-of-the-art methods by almost 4%. We have also discussed in detail the technical challenges faced during the implementation of the proposed model.

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