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Adaptive e-mails intention finding system based on words social networks

机译:基于单词社交网络的自适应电子邮件意图发现系统

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摘要

Although many anti-spam techniques have been proposed till date, a foolproof solution for overcoming spam has not been found yet. Spammers still spread spam by using invariant intentions such as advertising and phishing; these intentions are difficult to detect using signature-based or content-based spam filters. In this study, we have proposed an adaptive e-mail intention finding system based on the E-mail Word Social Network (EWSN) that can detect the e-mails' intention and can adaptively and continually learn. EWSN is a data structure used for profiling a user's intentions through solicited and unsolicited e-mails. The EWSNs are constructed on the basis of the information in the user's mailbox and the expanded social relations of words obtained via search engines on the World Wide Web. Unlike previous approaches of spam filters, our system only requires a small amount of training data and it can be trained through feedback incrementally. Experimental quantitative results demonstrate that the misclassification rate, precision rate, and recall rate are better than several content-based filtering methods using a limited amount of training data. The quantitative results also demonstrate that the proposed method has good detection ability in the case of novel spam e-mail detection, without constantly updating the pattern of novel spam e-mails. The proposed method -capable of intention profiling and continual adaptation - is robust for detecting spam e-mails.
机译:尽管迄今为止已经提出了许多反垃圾邮件技术,但尚未找到一种克服垃圾邮件的万无一失的解决方案。垃圾邮件发送者仍然通过使用不变的意图(例如广告和网络钓鱼)来传播垃圾邮件。使用基于签名或基于内容的垃圾邮件过滤器很难检测到这些意图。在这项研究中,我们提出了一种基于电子邮件词社交网络(EWSN)的自适应电子邮件意图发现系统,该系统可以检测电子邮件的意图并可以自适应地不断学习。 EWSN是一种数据结构,用于通过请求和未经请求的电子邮件来分析用户的意图。 EWSN是基于用户邮箱中的信息以及通过万维网上的搜索引擎获得的扩展单词社会关系而构建的。与以前的垃圾邮件过滤器方法不同,我们的系统只需要少量的培训数据,就可以通过反馈逐步进行培训。实验定量结果表明,错误分类率,准确率和召回率优于使用有限数量训练数据的几种基于内容的过滤方法。定量结果还表明,该方法在新型垃圾邮件检测中具有良好的检测能力,而无需不断更新新型垃圾邮件的模式。所提出的方法(能够进行意图分析和连续调整)对于检测垃圾邮件是很可靠的。

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