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Ecosystem of spamming on Twitter: Analysis of spam reporters and spam reportees

机译:Twitter上的垃圾邮件生态系统:垃圾邮件记者和垃圾邮件举报者的分析

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Lately, there has been a growing trend in the Internet space particularly among the Online Social Media (OSMs) platforms like Twitter, Facebook etc which are becoming huge repositories of information. This information, by design, is posted by users of these websites and consequently, this information is vast, un-organized, unreliable and dynamic. It is commonly observed that along with genuine users, a lot of activity is seen from spammers or users with the intent of spreading malicious or irrelevant content. In our work, we focus on spamming activity on Twitter. Spamming activity in Twitter is can typically be reported by its users, who we refer as reporters and those who indulge in spamming activities are referred as reportees. We collected data of suspected spammers, i.e. reportees as well as of the users who reported them, i.e. reporters. Thereafter, we classified them into various categories and tried to study the ecosystem of these reportees and reporters. We used three data mining techniques i.e., decision tree, K-nearest neighbors and random forest classifier for the classification tasks. Finally, we have compared these three algorithms on the basis of their accuracy.
机译:最近,Internet空间出现了增长趋势,特别是在诸如Twitter,Facebook等在线社交媒体(OSM)平台之间,这些平台正成为巨大的信息存储库。这些信息是有意设计的,由这些网站的用户发布,因此,这些信息是庞大的,无组织的,不可靠的和动态的。通常观察到,与真正的用户一起,垃圾邮件发送者或用户看到了许多旨在传播恶意或不相关内容的活动。在我们的工作中,我们专注于Twitter上的垃圾邮件活动。 Twitter中的垃圾邮件活动通常可以由其用户举报,我们将其称为记者,而沉迷于垃圾邮件活动的用户称为举报人。我们收集了可疑垃圾邮件发送者(即举报人)以及举报这些内容的用户(即举报人)的数据。此后,我们将它们分为各种类别,并尝试研究这些报告者和报告者的生态系统。我们使用了三种数据挖掘技术,即决策树,K近邻和随机森林分类器来进行分类任务。最后,我们根据这三种算法的准确性进行了比较。

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