False rumors detection on Sina Weibo by propagation structures

Data Engineering(2015)

引用 693|浏览535
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摘要
This paper studies the problem of automatic detection of false rumors on Sina Weibo, the popular Chinese microblogging social network. Traditional feature-based approaches extract features from the false rumor message, its author, as well as the statistics of its responses to form a flat feature vector. This ignores the propagation structure of the messages and has not achieved very good results. We propose a graph-kernel based hybrid SVM classifier which captures the high-order propagation patterns in addition to semantic features such as topics and sentiments. The new model achieves a classification accuracy of 91.3% on randomly selected Weibo dataset, significantly higher than state-of-the-art approaches. Moreover, our approach can be applied at the early stage of rumor propagation and is 88% confident in detecting an average false rumor just 24 hours after the initial broadcast.
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关键词
feature extraction,graph theory,pattern classification,social networking (online),support vector machines,chinese microblogging social network,sina weibo,false rumors detection,feature-based approaches,flat feature vector,graph-kernel based hybrid svm classifier,high-order propagation patterns,propagation structures,semantic features,skin
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