Cyberbullying detection on twitter using Big Five and Dark Triad features

  title={Cyberbullying detection on twitter using Big Five and Dark Triad features},
  author={Vimala Balakrishnan and Shahzaib Khan and Terence Fernandez and Hamid Reza Arabnia},
  journal={Personality and Individual Differences},
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    International Journal of Recent Technology and Engineering (IJRTE)
  • 2021
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