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Machine Learning Techniques applied to Twitter Spammers Detection

机译:机器学习技术应用于Twitter垃圾邮件发送者检测

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Every minute more than 320 new accounts are created on Twitter and more than 98,000 tweets are posted. Among the multitude of Twitter users, spammers and cybercriminals aim to pervade and strike legitimate users' accounts with a large amount of troublesome messages. Hence, the Social Network propagation opens new modalities for cyber-crime perpetration, while the spamming phenomenon exploits specific mechanism of messaging process. This research shows that Machine Learning (ML) may provide a powerful tool to support spammer detection in Twitter. The present paper compares the performance of three different ML algorithm in tackling this task. The experimental session involves a publicly available dataset.
机译:每分钟超过320个新帐户都会在Twitter上创建,并且发布了98,000多个推文。在众多的推特用户中,垃圾邮件发送者和网络犯罪分子旨在通过大量麻烦的消息来遍及和攻击合法的用户账户。因此,社会网络传播将打开网络犯罪的新模式,而垃圾邮件现象利用了消息传递过程的特定机制。本研究表明,机器学习(ML)可以提供强大的工具来支持Twitter中的垃圾邮件发送器检测。本文比较了三种不同ML算法在解决此任务时的性能。实验会话涉及公共数据集。

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