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Near real-time topic-driven rumor detection in source microblogs

机译:源微博中的实时主题驱动谣言检测

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摘要

Rumors can be propagated across online microblogs at a relatively low cost, but result in a series of major problems in our society. Traditional rumor detection approaches focus on exploring various propagation patterns or data interactions between a source microblog and its subsequent reactions. It is obvious that this causes missing interaction on rumor detection, especially in the absence of retweets or reactions. According to the communication theory of Allport and Postman (1947), Chorus (1953) and Rosnow (1988), the topic of a post can help determine its potential of being a rumor or not. Therefore, we develop a novel topic-driven rumor detection (TDRD) framework to determine whether a post is a rumor only according to its source microblog. Specifically, we first automatically perform topic classification on source microblogs, and then we successfully incorporate the predicted topic vector of the source microblogs into rumor detection. Our extensive experimental results demonstrate that our TDRD significantly outperforms state-of-the-art methods on both two English and two Chinese benchmark datasets. (C) 2020 Elsevier B.V. All rights reserved.
机译:谣言可以以相对较低的成本在线微博在线传播,但导致我们社会中的一系列主要问题。传统的谣言检测方法专注于探索各种传播模式或源微博与其随后的反应之间的数据相互作用。显而易见的是,这导致缺失对谣言检测的相互作用,特别是在没有转短文或反应的情况下。根据Allport and Postman的通信理论(1947),合唱(1953)和Rosnow(1988),帖子的主题可以帮助确定其谣言的潜力。因此,我们开发一个新颖的主题驱动的谣言检测(TDRD)框架,以确定帖子是否仅根据其源微博。具体来说,我们首先在源微博上自动执行主题分类,然后我们成功地将源微博的预测主题向量纳入了谣言检测。我们广泛的实验结果表明,我们的TDRD在两个英语和两个中文基准数据集中显着优于最先进的方法。 (c)2020 Elsevier B.v.保留所有权利。

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