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Multiple classifications for detecting Spam email by novel consultation algorithm

机译:基于新型咨询算法的垃圾邮件检测的多种分类

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Much work and many transactions these days are done via email. Email is a powerful tool for communication that saves both time and cost. However, due to the growth of social networks and advertisers, the number of unwanted emails sent to a cumulative mass of users continues to grow. Junk email that is sent in a bulk fashion is called UBE or Spam email, for short. To date many algorithms have been devised to flag junk or Spam email from legitimate or Ham email. However, none of these algorithms has been 100% accurate. Recent studies of clustering have pointed to hybrid methods that are powerful, stable, accurate, and more common than previous ones. Inspired by the processes of the Public Consultation and Voting System, this paper will present a novel algorithm to accurately flag junk email and to separate Spam from Ham email. The error rate of a single optimization algorithm will improve by 39% using of our consultation and voting (CAV) algorithm.
机译:如今,许多工作和许多交易都是通过电子邮件完成的。电子邮件是一种功能强大的通信工具,可以节省时间和成本。但是,由于社交网络和广告商的增长,发送给大量用户的无用电子邮件的数量持续增长。批量发送的垃圾电子邮件简称为UBE或垃圾邮件。迄今为止,已经设计出许多算法来标记来自合法或Ham电子邮件的垃圾邮件或垃圾邮件。但是,这些算法都不是100%准确的。最近的聚类研究指出,混合方法比以前的方法功能强大,稳定,准确,并且更常见。受公众咨询和投票系统流程的启发,本文将提出一种新颖的算法,以准确地标记垃圾邮件并将垃圾邮件与火腿邮件分开。使用我们的咨询和投票(CAV)算法,单个优化算法的错误率将提高39%。

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