服务器端的垃圾邮件检测和预防

S. Shyry, Venkat Sai Charan K, V. S. Kumar
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引用次数: 5

摘要

长期以来,垃圾邮件一直是一个令人恼火的问题。尽管已经改进了许多安排,但在更熟练地分离垃圾邮件方面仍有相当多的措施需要改进。这些天,垃圾邮件分离中一个值得注意的问题(也是普通方言处理中的内容表征)是向量空间的巨大尺寸,因为各种元素术语,这通常是广泛的图形和适度的顺序的原因。从文章的实质内容中提取语义含义并利用这些语义含义作为突出项来发展向量空间,而不是用传统的方式使用词语作为突出项,可以有效地减少向量的分量,同时促进表征。尽管有各种各样的技术来屏蔽垃圾邮件,但大部分程序设计者只是想阻止垃圾邮件传递给他们的客户。本文提出了一种有效的防止垃圾邮件交换的方法。本文提出了一种基于语义的文本分类技术协同过滤方法,并从文本内容的语义中选择相关的特征项。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spam Mail Detection and Prevention at Server Side
Spam is a genuine and irritating issue for quite a longtime. Despite the fact that a lot of arrangements have been advanced, there still remains a considerable measure to be advanced in separating spam messages all the more proficiently. These days a noteworthy issue in spam separating also as content characterization in common dialect handling is the colossal size of vector space because of the various element terms, which is normally the reason for broad figuring and moderate order. Extracting semantic implications from the substance of writings and utilizing these as highlight terms to develop the vector space, rather than utilizing words as highlight terms in convention ways, could decrease the component of vectors viably and advance the characterization in the meantime. In spite of the fact that there are a wide range of techniques to square spam messages, a large portion of program designers just mean to square spam messages from being conveyed to their customers. In this paper, we present an effective way to deal with keep spam messages from being exchanged.In this work, a Collaborative filtering approach with semantics-based text classification technology was proposed and the related feature terms were selected from the semantic meanings of the text content.
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