邀请还是诱饵?检测Facebook事件中的恶意url

Sonu Gupta, Shelly Sachdeva
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引用次数: 3

摘要

Facebook每月有22亿活跃用户,是最受欢迎的在线社交网络。鉴于其巨大的知名度和多样化的功能,如页面、事件、组等,它可能是网络犯罪分子发动各种攻击的最具吸引力的平台。在本文中,我们研究了Facebook事件在网络中传播恶意url中的作用。在这里,我们将重点分析由Facebook Pages创建的Facebook Events。现有的服务,如信任网(WOT)和其他黑名单都遵循众包模式。因此,只有当恶意url在网络上广泛传播并造成重大损害时,才能检测到它们。因此,我们在我们的标记数据集上训练了一个监督机器学习模型,以创建一个有效的分类器,用于自动检测恶意Facebook事件,独立于黑名单和第三方声誉服务。我们的模型能够使用支持向量机以75%的准确率对恶意事件进行分类。据我们所知,这是第一篇研究Facebook事件中恶意url存在的论文。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Invitation or Bait? Detecting Malicious URLs in Facebook Events
With 2.2 billion monthly active users, Facebook is the most popular Online Social Network. Given its huge popularity and diverse features such as pages, events, groups etc., it is potentially the most attractive platform for cybercriminals to launch various attacks. In this paper, we study the role of Facebook Events in disseminating malicious URLs in the network. Here, we focus our analysis on Facebook Events which are created by Facebook Pages. The existing services like Web of Trust (WOT) and other blacklists follow crowdsourcing models. Thus, malicious URLs can only be detected once they are widespread on the network and has done significant damage. Therefore, we train a supervised machine learning model on our labeled dataset to create an efficient classifier for automatic detection of malicious Facebook events, independent of blacklists and third-party reputation services. Our model is able to classify malicious events with 75% accuracy using Support Vector Machine. To the best of our knowledge, this is the first paper to study the presence of malicious URLs on Facebook Events.
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