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Hiding in plain sight: Characterizing and detecting malicious Facebook pages

机译:清晰可见:表征和检测恶意Facebook页面

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摘要

Facebook is the world's largest Online Social Network, having more than 1 billion users. Like most other social networks, Facebook is home to various categories of hostile entities who abuse the platform by posting malicious content. In this paper, we identify and characterize Facebook pages that engage in spreading URLs pointing to malicious domains. We revisit the scope and definition of what is deemed as “malicious” in the modern day Internet, and identify 627 pages publishing untrustworthy information, misleading content, adult and child unsafe content, scams, etc. Our findings revealed that at least 8% of all malicious pages were dedicated to promote a single malicious domain. Studying the temporal posting activity of pages revealed that malicious pages were 1.4 times more active daily than benign pages. We further identified collusive behavior within a set of malicious pages spreading adult and pornographic content. Finally, we attempted to automate the process of detecting malicious Facebook pages by training multiple supervised learning algorithms on our dataset. Artificial neural networks trained on a fixed sized bag-of-words performed the best and achieved an accuracy of 84.13%.
机译:Facebook是世界上最大的在线社交网络,拥有超过10亿用户。与大多数其他社交网络一样,Facebook是各种类别的敌对实体的所在地,这些实体通过发布恶意内容来滥用平台。在本文中,我们将识别和表征参与传播指向恶意域的URL的Facebook页面。我们重新审视了现代互联网中被视为“恶意”的内容的范围和定义,并确定了627页发布不可信信息,误导性内容,成人和儿童不安全内容,诈骗等内容。我们的发现表明,至少有8%所有恶意页面都专用于推广单个恶意域。研究页面的临时发布活动发现,恶意页面每天的活跃度是良性页面的1.4倍。我们进一步确定了在散布成人和色情内容的一组恶意页面中的串通行为。最后,我们尝试通过在数据集上训练多种监督学习算法来自动化检测恶意Facebook页面的过程。在固定大小的单词袋上训练的人工神经网络表现最佳,准确率达到84.13%。

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