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Spam filtering email classification (SFECM) using gain and graph mining algorithm

机译:使用增益和图形挖掘算法垃圾邮件过滤电子邮件分类(SFECM)

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This paper proposes a hybrid solution of spam email classifier using context based email classification model as main algorithm complimented by information gain calculation to increase spam classification accuracy. Proposed solution consists of three stages email pre-processing, feature extraction and email classification. Research has found that LingerIG spam filter is highly effective at separating spam emails from cluster of homogenous work emails. Also experiment result proved the accuracy of spam filtering is 100% as recorded by the team of developers at University of Sydney. The study has shown that implementing the spam filter in the context-based email classification model is feasible. Experiment of the study has confirmed that spam filtering aspect of context-based classification model can be improved.
机译:本文提出了使用基于上下文的电子邮件分类模型作为符合信息增益计算的主要算法来提高垃圾邮件分类准确性的主要算法的混合垃圾邮件分类器的混合解决方案。提出的解决方案包括三个阶段电子邮件预处理,功能提取和电子邮件分类。研究发现,中值垃圾邮件过滤器在将垃圾邮件从同质工作电子邮件集群中分离垃圾邮件。实验结果证明,悉尼开发商团队记录的垃圾邮件过滤的准确性为100%。该研究表明,在基于上下文的电子邮件分类模型中实现垃圾邮件过滤器是可行的。该研究的实验证实,可以提高基于上下文的分类模型的垃圾邮件过滤方面。

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