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Leveraging Behavior Diversity to Detect Spammers in Online Social Networks

机译:利用行为多样性来检测在线社交网络中的垃圾邮件发送者

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Online social networks have become very popular and convenient for communication. However, spammers often take control of accounts to create and propagate attacks using messages and URLs. Most existing studies to detect spammers are based on machine learning methods. Features are the key factors considered in these methods, and most documented features in existing studies can be evaded by spammers. In this study, we propose behavior features, which are based on behavior diversity when sending messages, combined with existing effective features, to build a detection system. We leverage entropy to present differences in behavior diversity between spammers and normal accounts. In the cases of evasion by periodically changing a behavior model in the sending of messages by spammers, we also introduce conditional entropy, which is calculated based on the Markov model. To achieve our goal, we have collected information from approximately 489,451 accounts including 108,168,675 corresponding messages from Sina Weibo. Through evaluation of our detection methods, the accuracy rate of this system is approximately 91.5%, and the false positive rate is approximately 3.4%.
机译:在线社交网络已经变得非常流行并且便于交流。但是,垃圾邮件发送者通常会控制帐户,以使用消息和URL创建和传播攻击。现有的大多数检测垃圾邮件发送者的研究都是基于机器学习方法的。特征是这些方法中考虑的关键因素,垃圾邮件发送者可以逃避现有研究中大多数记录在案的特征。在这项研究中,我们提出了行为特征,这些特征基于发送消息时的行为多样性以及现有的有效特征,以构建一个检测系统。我们利用熵来表示垃圾邮件发送者和普通帐户之间行为差异的差异。在通过定期更改垃圾邮件发送者的邮件发送中的行为模型来进行规避的情况下,我们还引入了条件熵,该条件熵是基于马尔可夫模型计算的。为了实现我们的目标,我们已经从大约489,451个帐户中收集了信息,其中包括来自新浪微博的108,168,675条相应消息。通过评估我们的检测方法,该系统的准确率约为91.5%,假阳性率约为3.4%。

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