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Title Information Credibility on Twitter
Authors Carlos Castillo, Marcelo Mendoza, Bárbara Poblete
Publication date 2011
Abstract We analyze the information credibility of news propagated through
Twitter, a popular microblogging service. Previous research has
shown that most of the messages posted on Twitter are truthful, but
the service is also used to spread misinformation and false rumors,
often unintentionally. On this paper we focus on automatic methods
for assessing the credibility of a given set of tweets.
Specifically, we analyze microblog postings related to "trending"
topics, and classify them as credible or not credible, based on
features extracted from them. We use features from users' posting
and re-posting ("re-tweeting") behavior, from the text of the posts,
and from citations to external sources. We evaluate our methods
using a significant number of human assessments about the
credibility of items on a recent sample of Twitter postings. Our
results shows that there are measurable differences in the way
messages propagate, that can be used to classify them automatically
as credible or not credible, with precision and recall in the range
of 70% to 80%.
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Pages 675-684
Conference name International World Wide Web Conference
Publisher ACM Press (New York, NY, USA)
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