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A distance-based outlier detection method for rumor detection exploiting user behaviorial differences

机译:一种基于距离的离群值检测方法,用于利用用户行为差异进行谣言检测

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Rumors can spread fast on Online Social Networks (OSN) which may cause serious public issues. Thus the detection of rumors on OSN has become a hot research topic in recent years. While most of the previous work proposed some supervised methods like classification to deal with the rumor detection problem, we view the rumors as outliers among the recent Weibos posted by a user and propose a novel outlier detection method to detect them. An improved PCA method is proposed to deal with both the categorical and numerical features used for detection and to preserve the most significant information that we are interested in. Then a distance-based outlier detection method is applied to detect the potential rumors. Experimental results show that our method can achieve a better F1 and time performance compared to previous work.
机译:谣言可以在在线社交网络(OSN)上迅速传播,这可能会引起严重的公共问题。因此,关于OSN的谣言的检测已成为近年来的热门研究课题。尽管先前的大多数工作都提出了一些有监督的方法(如分类法)来处理谣言检测问题,但我们将谣言视为用户最近发布的微博中的异常值,并提出了一种新颖的异常值检测方法来检测它们。提出了一种改进的PCA方法来处理用于检测的分类和数值特征,并保留我们感兴趣的最重要的信息。然后将基于距离的离群值检测方法用于检测潜在的谣言。实验结果表明,与以前的工作相比,我们的方法可以实现更好的F1和时间性能。

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