Coooolll: A Deep Learning System for Twitter Sentiment Classification

@inproceedings{Tang2014CoooolllAD,
  title={Coooolll: A Deep Learning System for Twitter Sentiment Classification},
  author={Duyu Tang and Furu Wei and Yanyan Zhao and Ting Liu and Ming Zhou},
  booktitle={SemEval@COLING},
  year={2014}
}
In this paper, we develop a deep learning system for message-level Twitter sentiment classification. Among the 45 submitted systems including the SemEval 2013 participants, our system (Coooolll) is ranked 2nd on the Twitter2014 test set of SemEval 2014 Task 9. Coooolll is built in a supervised learning framework by concatenating the sentiment-specific word embedding (SSWE) features with the state-of-the-art hand-crafted features. We develop a neural network with hybrid loss function 1 to learn… CONTINUE READING

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