• Corpus ID: 2071397

Lexicon-based Sentiment Analysis for Persian Text

  title={Lexicon-based Sentiment Analysis for Persian Text},
  author={Fatemeh Amiri and Simon Scerri and Mohammad Hasan Khodashahi},
The vast information related to products and services available online, of both objective and subjective nature, can be used to provide contextualized suggestions and guidance to possible new customers. User feedback and comments left on different shopping websites, portals and social media have become a valuable resource, and text analysis methods have become an invaluable tool to process this kind of data. A lot of business use-cases have applied sentiment analysis in order to gauge people’s… 

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