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A new dissimilarity measure for online social networks moderation

机译:在线社交网络审核的新差异度量

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摘要

Online Social Networks (OSN) and Virtual Communities (VC) software are vital tools useful to connect organizations with customers or community members. As these tools become more ubiquitous with general population, different managment problems start to arise. As these members' interactions become large, it is impossible for manual handling of moderation tasks without automatic or semi-automatic techniques. Of course, web mining techniques are very useful for understanding text patterns or browsing patterns in Websites, opening an opportunity to develop new algorithms to discover community members" patterns which have to be moderated. There have been previous work done on text patterns discovery for moderation that have reduced the moderation task to finding spammers. However, the moderation problem is much more complex: it involves not only text but also behavior patterns (from bulling of other members to fights between them). We present a dissimilarity measure which includes human interaction aspects combined with these interactions' contents semantics (not just free words of text). We show how we successfully applied our method into a real Virtual Community of Practice to detect users that should be moderated.
机译:在线社交网络(OSN)和虚拟社区(VC)软件是使组织与客户或社区成员联系起来的重要工具。随着这些工具在普通人群中变得越来越普遍,不同的管理问题开始出现。随着这些成员之间的交互变得越来越大,如果没有自动或半自动技术,则无法手动处理审核任务。当然,Web挖掘技术对于理解网站中的文本模式或浏览模式非常有用,这为开发新算法以发现必须进行审核的社区成员的模式提供了机会。以前已经进行过一些文本模式发现工作,以进行审核减少了审核任务,减少了查找垃圾邮件的发送者;但是,审核问题要复杂得多:它不仅涉及文本,而且还涉及行为模式(从欺负其他成员到他们之间的战斗)。这些方面结合了这些交互的内容语义(不仅仅是文本的自由词),我们展示了如何将我们的方法成功地应用于真实的虚拟实践社区中,以检测应该审核的用户。

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