电子邮件过滤中的文本分类技术综述

U. Pandey, Shampa Chakravarty
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引用次数: 39

摘要

万维网中文本内容的持续爆炸性增长引起了对复杂的文本分类(TC)技术的需求,这种技术需要结合效率和高质量的结果。电子邮件过滤是一个有可能影响到每一个互联网用户的应用程序。尽管对这个问题进行了大量的研究,但指出趋势和方向的调查却很少。本文试图对当前流行的将电子邮件分类为垃圾邮件或合法电子邮件的技术进行分类,并提出可能的技术来填补空白。我们的研究结果表明,基于上下文的电子邮件过滤通过学习各种上下文(如n-gram短语、语言结构或基于用户个人资料的上下文)来定制他/她的过滤方案,在提高质量方面最有潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Survey on Text Classification Techniques for E-mail Filtering
The continuing explosive growth of textual content within the World Wide Web has given rise to the need for sophisticated Text Classification (TC) techniques that combine efficiency with high quality of results. E-mail filtering is one application that has the potential to affect every user of the internet. Even though a large body of research has delved into this problem, there is a paucity of survey that indicates trends and directions. This paper attempts to categorize the prevalent popular techniques for classifying email as spam or legitimate and suggest possible techniques to fill in the lacunae. Our findings suggest that context-based email filtering has the most potential in improving quality by learning various contexts such as n-gram phrases, linguistic constructs or users’ profile based context to tailor his/her filtering scheme.
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