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Harnessing the Nature of Spam in Scalable Online Social Spam Detection

机译:在可扩展的在线社交垃圾邮件检测中利用垃圾邮件的性质

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Disinformation in social networks has been a worldwide problem. Social users are surrounded by a huge volume of malicious links, biased comments, fake reviews, or fraudulent advertisements, etc. Traditional spam detection approaches propose a variety of statistical feature-based models to filter out social spam from a historical dataset. However, they omit the real word situation of social data, that is, social spam is fast changing with new topics or events. Therefore, traditional approaches cannot effectively achieve online detection of the "drifting" social spam with a fixed statistic feature set. In this paper, we present Sifter, a system which can detect online social spam in a scalable manner without the labor-intensive feature engineering. The Sifter system is two-fold: (1) a decentralized DHT-based overlay deployment for harnessing the group characteristics of social spam activities within a specific topic/event; (2) a social spam processing with the support of Recurrent Neural Network (RNN) to get rid of the traditional manual feature engineering. Results show that Sifter achieves graceful spam detection performances with the minimal size of data and good balance in group management.
机译:社交网络中的虚假信息已成为一个全球性的问题。社交用户周围有大量恶意链接,偏颇的评论,虚假评论或欺诈性广告等。传统的垃圾邮件检测方法提出了多种基于统计特征的模型,以从历史数据集中过滤出社交垃圾邮件。但是,他们忽略了社交数据的真实情况,即社交垃圾邮件随着新的主题或事件而迅速变化。因此,传统方法无法通过固定的统计特征集有效地实现对“漂流”社交垃圾邮件的在线检测。在本文中,我们介绍了Sifter,它是一种无需进行劳动密集型功能即可以可扩展方式检测在线社交垃圾邮件的系统。 Sifter系统有两个方面:(1)基于DHT的分散式覆盖部署,用于在特定主题/事件中利用社交垃圾邮件活动的组特征; (2)在递归神经网络(RNN)的支持下进行社会垃圾邮件处理,以摆脱传统的手动特征工程。结果表明,Sifter可以以最小的数据量和良好的组管理平衡实现优雅的垃圾邮件检测性能。

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