Sentiment analysis algorithms and applications: A survey

@inproceedings{Medhat2014SentimentAA,
  title={Sentiment analysis algorithms and applications: A survey},
  author={Walaa Medhat and Asif Hassan and Hoda Korashy},
  year={2014}
}
Abstract Sentiment Analysis (SA) is an ongoing field of research in text mining field. SA is the computational treatment of opinions, sentiments and subjectivity of text. This survey paper tackles a comprehensive overview of the last update in this field. Many recently proposed algorithms' enhancements and various SA applications are investigated and presented briefly in this survey. These articles are categorized according to their contributions in the various SA techniques. The related fields… CONTINUE READING
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