Comparative Analysis of Deep Learning Techniques for the Classification of Hate Speech

Authors

  • A Iorliam Department of Mathematics & Computer Science, BSU, Makurdi, Nigeria https://orcid.org/0000-0001-8238-9686
  • S Agber Department of Mathematics & Computer Science, BSU, Makurdi, Nigeria
  • MP Dzungwe Department of Mathematics & Computer Science, BSU, Makurdi, Nigeria
  • DK Kwaghtyo Department of Mathematics & Computer Science, BSU, Makurdi, Nigeria
  • S Bum Department of Mathematics & Computer Science, BSU, Makurdi, Nigeria

DOI:

: https://doi.org/10.46912/napas.227

Keywords:

Hate Speech, Deep Learning, Long Short-Term Memory (LSTM), Convolutional Neural Network (CNN)

Abstract

Social media provides opportunities for individuals to anonymously communicate and express hateful feelings and opinions at the comfort of their rooms. This anonymity has become a shield for many individuals or groups who use social media to express deep hatred for other individuals or groups, tribes or race, religion, gender, as well as belief systems. In this study, a comparative analysis is performed using Long Short-Term Memory and Convolutional Neural Network deep learning techniques for Hate Speech classification. This analysis demonstrates that the Long Short-Term Memory classifier achieved an accuracy of 92.47%, while the Convolutional Neural Network classifier achieved an accuracy of 92.74%. These results showed that deep learning techniques can effectively classify hate speech from normal speech.

Published

2021-08-20

How to Cite

Iorliam, A., Agber, S., Dzungwe, M., Kwaghtyo, D., & Bum, S. (2021). Comparative Analysis of Deep Learning Techniques for the Classification of Hate Speech. NIGERIAN ANNALS OF PURE AND APPLIED SCIENCES, 4(1), 103–108. https://doi.org/10.46912/napas.227