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Oases: An Online Scalable Spam Detection System for Social Networks

机译:Oases:用于社交网络的在线可扩展垃圾邮件检测系统

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Web-based social networks enable new community-based opportunities for participants to engage, share their thoughts, and interact with each other. Theses related activities such as searching and advertising are threatened by spammers, content polluters, and malware disseminators. We propose a scalable spam detection system, termed Oases, for uncovering social spam in social networks using an online and scalable approach. The novelty of our design lies in two key components: (1) a decentralized DHT-based tree overlay deployment for harvesting and uncovering deceptive spam from social communities; and (2) a progressive aggregation tree for aggregating the properties of these spam posts for creating new spam classifiers to actively filter out new spam. We design and implement the prototype of Oases and discuss the design considerations of the proposed approach. Our large-scale experiments using real-world Twitter data demonstrate scalability, attractive load-balancing, and graceful efficiency in online spam detection for social networks.
机译:基于Web的社交网络为参与者提供了新的基于社区的机会,使他们能够参与,分享他们的思想并相互交流。这些与搜索和广告相关的活动受到垃圾邮件发送者,内容污染者和恶意软件传播者的威胁。我们提出了一种可扩展的垃圾邮件检测系统,称为Oases,用于使用在线可扩展方法在社交网络中发现社交垃圾邮件。我们设计的新颖性在于两个关键组成部分:(1)基于DHT的分散树覆盖部署,用于从社交社区收集和发现欺骗性垃圾邮件; (2)渐进式聚合树,用于聚合这些垃圾邮件帖子的属性,以创建新的垃圾邮件分类器以主动过滤掉新的垃圾邮件。我们设计并实现了Oases的原型,并讨论了该方法的设计注意事项。我们使用真实的Twitter数据进行的大规模实验证明了社交网络在线垃圾邮件检测的可伸缩性,有吸引力的负载平衡和优雅的效率。

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