• Corpus ID: 220447507

Automatic Sarcasm Detection: A Survey

@article{Joshi2016AutomaticSD,
  title={Automatic Sarcasm Detection: A Survey},
  author={Aditya Joshi and Pushpak Bhattacharyya and Mark James Carman},
  journal={arXiv: Computation and Language},
  year={2016}
}
Automatic sarcasm detection is the task of predicting sarcasm in text. This is a crucial step to sentiment analysis, considering prevalence and challenges of sarcasm in sentiment-bearing text. Beginning with an approach that used speech-based features, sarcasm detection has witnessed great interest from the sentiment analysis community. This paper is the first known compilation of past work in automatic sarcasm detection. We observe three milestones in the research so far: semi-supervised… 

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