• Corpus ID: 17529286

Content-Driven Detection of Cyberbullying on the Instagram Social Network

@inproceedings{Zhong2016ContentDrivenDO,
  title={Content-Driven Detection of Cyberbullying on the Instagram Social Network},
  author={Haoti Zhong and Hao Li and Anna Cinzia Squicciarini and Sarah Michele Rajtmajer and Christopher Griffin and David J. Miller and Cornelia Caragea},
  booktitle={International Joint Conference on Artificial Intelligence},
  year={2016},
  url={https://api.semanticscholar.org/CorpusID:17529286}
}
This work investigates use of posted images and captions for improved detection of bullying in response to shared content, and identifies the importance of these advanced features in assisting detection of cyberbullying in posted comments.

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