Evaluation Datasets for Twitter Sentiment Analysis: A survey and a new dataset, the STS-Gold

@inproceedings{Saif2013EvaluationDF,
  title={Evaluation Datasets for Twitter Sentiment Analysis: A survey and a new dataset, the STS-Gold},
  author={Hassan Saif and Marta Fernandez Andres and Yulan He and Harith Alani},
  booktitle={ESSEM@AI*IA},
  year={2013}
}
Sentiment analysis over Twitter offers organisations and individuals a fast and effective way to monitor the publics' feelings towards them and their competitors. To assess the performance of sentiment analysis methods over Twitter a small set of evaluation datasets have been released in the last few years. In this paper we present an overview of eight publicly available and manually annotated evaluation datasets for Twitter sentiment analysis. Based on this review, we show that a common… CONTINUE READING

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