articleJul 25, 2010Closed access

Empirical study of topic modeling in Twitter

Lehigh University

Indexed incrossref

Abstract

Social networks such as Facebook, LinkedIn, and Twitter have been a crucial source of information for a wide spectrum of users. In Twitter, popular information that is deemed important by the community propagates through the network. Studying the characteristics of content in the messages becomes important for a number of tasks, such as breaking news detection, personalized message recommendation, friends recommendation, sentiment analysis and others. While many researchers wish to use standard text mining tools to understand messages on Twitter, the restricted length of those messages prevents them from being employed to their full potential.

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Authors

2

Topics & keywords

Keywords
  • Computer science
  • Social media
  • World Wide Web
  • Microblogging
  • Sentiment analysis
  • Social network (sociolinguistics)
  • Empirical research
  • Social network analysis
UN Sustainable Development Goals
  • Quality Education
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