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A possibilistic framework for the detection of terrorism-related Twitter communities in social media

机译:在社交媒体中检测与恐怖主义有关的Twitter社区的可能性框架

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摘要

Since the appearance of social networks, there was a historic increase of data. Unfortunately, terrorists are taking advantage of the easiness of accessing social networks and they have set up profiles to recruit, radicalize, and raise funds. Most of these profiles have pages that exist as well as new recruits to join the terrorist groups, see, and share information. Therefore, there is a potential need for detecting terrorist communities in social networks in order to search for key hints in posts that appear to promote the militants' cause. In order to remedy this problem, we first use a possibilistic-clustering algorithm that allows more flexibility when assigning a social network profile to clusters (non-terrorist, terrorist-sympathizer, terrorist). Then, we introduce a new possibilistic flexible graph mining method to discover similar subgraphs by applying possibilistic similarity rather than using hard structural exact similarity. We experimentally show the efficiency of our possibilistic approach through a detailed process of tweets extract, semantic processing, and classification of the community detection.
机译:自从社交网络出现以来,数据就出现了历史性增长。不幸的是,恐怖分子利用了访问社交网络的便利性,他们建立了个人资料来招募,激进化和筹集资金。这些个人资料中的大多数都有现有的页面以及加入恐怖主义团体,查看和共享信息的新兵。因此,可能需要在社交网络中检测恐怖分子社区,以便在似乎促进武装分子事业的帖子中搜索关键提示。为了解决此问题,我们首先使用可能性集群算法,该算法在将社交网络配置文件分配给集群(非恐怖分子,恐怖分子同情者,恐怖分子)时具有更大的灵活性。然后,我们介绍了一种新的可能性柔性图挖掘方法,该方法通过应用可能性相似性而不是使用硬结构精确相似性来发现相似子图。我们通过推文提取,语义处理和社区检测分类的详细过程,通过实验证明了我们的可能性方法的效率。

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