A survey on classification techniques for opinion mining and sentiment analysis

@article{Hemmatian2017ASO,
  title={A survey on classification techniques for opinion mining and sentiment analysis},
  author={Fatemeh Hemmatian and Mohammad Karim Sohrabi},
  journal={Artificial Intelligence Review},
  year={2017},
  pages={1-51}
}
Opinion mining is considered as a subfield of natural language processing, information retrieval and text mining. Opinion mining is the process of extracting human thoughts and perceptions from unstructured texts, which with regard to the emergence of online social media and mass volume of users’ comments, has become to a useful, attractive and also challenging issue. There are varieties of researches with different trends and approaches in this area, but the lack of a comprehensive study to… 
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