Abstract
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.
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