Proceedings of the ACM SIGKDD Workshop on Mining Data Semantics 2012
DOI: 10.1145/2350190.2350203
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Automatic detection of rumor on Sina Weibo

Abstract: The problem of gauging information credibility on social networks has received considerable attention in recent years. Most previous work has chosen Twitter, the world's largest micro-blogging platform, as the premise of research. In this work, we shift the premise and study the problem of information credibility on Sina Weibo, China's leading microblogging service provider. With eight times more users than Twitter, Sina Weibo is more of a Facebook-Twitter hybrid than a pure Twitter clone, and exhibits several… Show more

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Cited by 540 publications
(353 citation statements)
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“…DTC and SVM-RBF: The Twitter information credibility model using Decision Tree Classifier (Castillo et al, 2011) and the SVM-based model with RBF kernel (Yang et al, 2012), respectively, both using hand-crafted features based on the overall statistics of the posts.…”
Section: Methodsmentioning
confidence: 99%
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“…DTC and SVM-RBF: The Twitter information credibility model using Decision Tree Classifier (Castillo et al, 2011) and the SVM-based model with RBF kernel (Yang et al, 2012), respectively, both using hand-crafted features based on the overall statistics of the posts.…”
Section: Methodsmentioning
confidence: 99%
“…Castillo et al (2011) studied information credibility on Twitter using a wide range of hand-crafted features. Following that, various features corresponding to message contents, user profiles and statistics of propagation patterns were proposed in many studies (Yang et al, 2012;Wu et al, 2015;Sun et al, 2013;Liu et al, 2015). Zhao et al (2015) focused on early rumor detection by using regular expressions for finding questing and denying tweets as the key for debunking rumor.…”
Section: Related Workmentioning
confidence: 99%
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“…Most existing algorithms for debunking rumors, however, follow Castillo, Mendoza, and Poblete's work (Castillo et al, 2011, Mendoza et al, 2010 employing variations on data used and features extracted (Wu et al, 2015, Yang et al, 2012. Qazvinian and colleagues (2011) focus on rumor-related tweets to match certain regular expression of the keyword query and the users' believing behavior about those rumor-related tweets; both pieces of information are instrumental in isolating rumors.…”
Section: Rumors and Rumor Debunkingmentioning
confidence: 99%
“…Qazvinian and colleagues (2011) focus on rumor-related tweets to match certain regular expression of the keyword query and the users' believing behavior about those rumor-related tweets; both pieces of information are instrumental in isolating rumors. Mendoza and colleagues (2010) analyze user behavior through tweets during the Chilean earthquake that year: "they analyze users' retweeting topology network and the difference in the rumor diffusion pattern on Twitter environment than on traditional news platforms" (Yang et al, 2012). Moving away from Twitter, Yang and colleagues (2012) studied Sina Weibo, China's leading micro-blogging service provider that functions like a FacebookTwitter hybrid.…”
Section: Rumors and Rumor Debunkingmentioning
confidence: 99%