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A Semantic Graph-Based Approach for Radicalisation Detection on Social Media

机译:基于语义图的社交媒体激进检测方法

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摘要

From its start, the so-called Islamic State of Iraq and the Levant (ISIL/ISIS) has been successfully exploiting social media networks, most notoriously Twitter, to promote its propaganda and recruit new members, resulting in thousands of social media users adopting a pro-ISIS stance every year. Automatic identification of pro-ISIS users on social media has, thus, become the centre of interest for various governmental and research organisations. In this paper we propose a semantic graph-based approach for radicalisation detection on Twitter. Unlike previous works, which mainly rely on the lexical representation of the content published by Twitter users, our approach extracts and makes use of the underlying semantics of words exhibited by these users to identify their pro/anti-ISIS stances. Our results show that classifiers trained from semantic features outperform those trained from lexical, sentiment, topic and network features by 7.8% on average F1-measure.
机译:从一开始,所谓的伊拉克和黎凡特伊斯兰国(ISIL / ISIS)就一直成功利用社交媒体网络(最著名的是Twitter)来宣传其宣传并招募新成员,导致成千上万的社交媒体用户采用了每年都支持ISIS。因此,在社交媒体上自动识别亲ISIS用户已成为各种政府和研究组织的关注中心。在本文中,我们提出了一种基于语义图的Twitter激进检测方法。与以前的作品主要依靠Twitter用户发布的内容的词汇表示形式不同,我们的方法提取并利用了这些用户展示的单词的潜在语义来识别其赞成/反对ISIS立场。我们的结果表明,从语义特征训练的分类器比从词汇,情感,主题和网络特征训练的分类器平均F1量度要高7.8%。

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