基于监督学习和互信息特征选择的邮件过滤

Walaa K. Gad, S. Rady
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引用次数: 12

摘要

电子邮件是当今沟通和传递信息最重要的方式之一。由于传递快捷、方便获取,它几乎被应用于工作和生活中交流的方方面面。然而,在过去的几年里,电子邮件用户的增加导致了垃圾邮件的急剧增加。本文提出了一种基于监督分类器和互信息的电子邮件过滤方法。该模型将机器监督学习与特征选择相结合。提出词频(Term frequency, TF)来为每个电子邮件类别的词分配相关权重。我们进行了实验来比较六种不同的分类器。结果表明,该方法在查全率、查全率和查准率方面都有较高的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Email filtering based on supervised learning and mutual information feature selection
Electronic mail is one of today's most important ways to communicate and transfer information. Because of fast delivery and easy to access, it is used almost in every aspect of communication in work and life. However, the increase in email users has resulted in a dramatic increase in spam emails during the past few years. In this paper, we propose an email-filtering approach that is based on supervised classifier and mutual information. The proposed model has the advantage of combining machine supervised learning with feature selection. Term frequency (TF) is presented to assign relevance weights to words of each email class. We conduct experiments to compare between six different classifiers. Results show that the proposed approach has high performance in terms of precision, recall and accuracy performance measures.
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