A review of techniques for sentiment analysis Of Twitter data

@article{Bhuta2014ARO,
  title={A review of techniques for sentiment analysis Of Twitter data},
  author={Sagar Bhuta and Avit Doshi and Uehit Doshi and Meera Narvekar},
  journal={2014 International Conference on Issues and Challenges in Intelligent Computing Techniques (ICICT)},
  year={2014},
  pages={583-591}
}
There has been a rapid increase in the use of social networking websites in the last few years. People most conveniently express their views and opinions on a wide array of topics via such websites. Sentiment analysis of such data which comprises of people's views is very important in order to gauge public opinion on a particular topic of interest. This paper reviews a number of techniques, both lexicon-based approaches as well as learning based methods that can be used for sentiment analysis… CONTINUE READING

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