• Corpus ID: 54072129

The Language of Fake News: Opening the Black-Box of Deep Learning Based Detectors

@inproceedings{OBrien2018TheLO,
  title={The Language of Fake News: Opening the Black-Box of Deep Learning Based Detectors},
  author={Nicole O'Brien and Sophia Latessa and Georgios Evangelopoulos and Xavier Boix},
  year={2018}
}
This work was supported by the National Science Foundation Science and Technology Center Award CCF-123121. 
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