Earthquake Observation by Social Sensors

Social media have garnered much attention recently and the number of social media users has been increasing. Social media are kinds of media for social interaction among users. Users create contents for themselves and exchange them on social media. Social media include many kinds of forms, including weblog, wikis, videos and microblogs. One of the biggest characteristics of social media is user-generated contents.

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