Towards an Efficient Opinion Measurement in Arabic Comments

@article{Cherif2015TowardsAE,
  title={Towards an Efficient Opinion Measurement in Arabic Comments},
  author={Walid Cherif and Abdellah Madani and Mohamed Kissi},
  journal={Procedia Computer Science},
  year={2015},
  volume={73},
  pages={122-129}
}
Abstract Arabic language is the fifth most widely used language on Internet1. Every day, a huge volume of Arabic comments and reviews have been generated concerning different aspects of our life. In the light of the scarcity of systems to analyze this data, we propose in this paper a complete approach in order to identify and classify author's opinions. It is conducted using a dataset consisting of 625 Arabic reviews and comments collected from Trip Advisor website which fall into five classes… 
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