Building Ontology for Different Emotional Contexts and Multilingual Environment in Opinion Mining

  title={Building Ontology for Different Emotional Contexts and Multilingual Environment in Opinion Mining},
  author={Wan Tao and Tao Liu and Wei Yu},
AbstractWith the explosive growth of various social media applications, individuals and organizations are increasingly using their contents (e.g. reviews, forum discussions, blogs, micro-blogs, comments, and postings in social network sites) for decision-making. These contents are typical big data. Opinion mining or sentiment analysis focuses on how to extract emotional semantics from these big data to help users to get a better decision. That is not an easy task, because it faces many problems… 

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