社交网络用户生成内容中的垃圾邮件制造者行为分析与检测

Enhua Tan, Lei Guo, Songqing Chen, Xiaodong Zhang, Y. Zhao
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引用次数: 42

摘要

随着互联网上用户生成内容(UGC)的爆炸式增长,垃圾邮件也在激增。垃圾邮件发送者通常会插入热门关键词,或者只是简单地从带有垃圾邮件链接的网络上复制粘贴最近的文章,试图禁用基于内容的检测。为了有效检测用户生成内容中的垃圾信息,我们首先对一家大型商业性UGC网站进行了325天的垃圾信息活动综合分析,涵盖了600多万篇帖子和近40万用户。我们的分析表明,UGC垃圾邮件发送者表现出独特的非文本模式,如发布活动、广告垃圾邮件链接指标和垃圾邮件托管行为。基于这些非文本特征,我们通过几种分类方法证明可以实现高的离线检测率。这些结果进一步促使我们开发一个运行时方案,即BARS,以基于这些垃圾邮件模式检测垃圾邮件帖子。实验结果证明了该方法的有效性和鲁棒性。
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Spammer Behavior Analysis and Detection in User Generated Content on Social Networks
Spam content is surging with an explosive increase of user generated content (UGC) on the Internet. Spammers often insert popular keywords or simply copy and paste recent articles from the Web with spam links inserted, attempting to disable content-based detection. In order to effectively detect spam in user generated content, we first conduct a comprehensive analysis of spamming activities on a large commercial UGC site in 325 days covering over 6 million posts and nearly 400 thousand users. Our analysis shows that UGC spammers exhibit unique non-textual patterns, such as posting activities, advertised spam link metrics, and spam hosting behaviors. Based on these non-textual features, we show via several classification methods that a high detection rate could be achieved offline. These results further motivate us to develop a runtime scheme, BARS, to detect spam posts based on these spamming patterns. The experimental results demonstrate the effectiveness and robustness of BARS.
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