SentiKLUE: Updating a Polarity Classifier in 48 Hours

@inproceedings{Evert2014SentiKLUEUA,
  title={SentiKLUE: Updating a Polarity Classifier in 48 Hours},
  author={Stefan Evert and Thomas Proisl and Paul Greiner and Besim Kabashi},
  booktitle={*SEMEVAL},
  year={2014}
}
SentiKLUE is an update of the KLUE polarity classifier – which achieved good and robust results in SemEval-2013 with a simple feature set – implemented in 48 hours. 

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