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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Robust classification for spam filtering by back-propagation neural networks using behavior-based features
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Robust classification for spam filtering by back-propagation neural networks using behavior-based features

机译:使用基于行为的功能通过反向传播神经网络对垃圾邮件过滤进行可靠分类

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摘要

Earlier works on detecting spam e-mails usually compare the contents of e-mails against specific keywords, which are not robust as the spammers frequently change the terms used in e-mails. We have presented in this paper a novel featuring method for spam filtering. Instead of classifying e-mails according to keywords, this study analyzes the spamming behaviors and extracts the representative ones as features for describing the characteristics of e-mails. An back-propagation neural network is designed and implemented, which builds classification model by considering the behavior-based features revealed from e-mails' headers and syslogs. Since spamming behaviors are infrequently changed, compared with the change frequency of keywords used in spams, behavior-based features are more robust with respect to the change of time; so that the behavior-based filtering mechanism outperform keyword-based filtering. The experimental results indicate that our methods are more useful in distinguishing spam e-mails than that of keyword-based comparison.
机译:较早的检测垃圾邮件的方法通常将电子邮件的内容与特定的关键字进行比较,由于垃圾邮件发送者经常更改电子邮件中使用的术语,因此这些关键字并不可靠。我们在本文中介绍了一种新颖的垃圾邮件过滤功能方法。该研究没有按关键字对电子邮件进行分类,而是分析了垃圾邮件行为,并提取了具有代表性的垃圾邮件作为描述电子邮件特征的特征。设计并实现了一种反向传播神经网络,它通过考虑从电子邮件的标头和系统日志中揭示的基于行为的功能来构建分类模型。由于垃圾邮件行为很少更改,因此与垃圾邮件中使用的关键字的更改频率相比,基于行为的功能在时间变化方面更强大。因此基于行为的过滤机制要优于基于关键字的过滤。实验结果表明,与基于关键字的比较相比,我们的方法在区分垃圾邮件方面更有用。

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