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Improved social network aided personalized spam filtering approach using RBF neural network

机译:使用RBF神经网络的改进的社交网络辅助个性化垃圾邮件过滤方法

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In present day to day life the important communications are going on through the emails and social networking websites. Whatever the spam is main issue into the email systems. To save against unsolicited e-mails there are number of techniques presented with goal of efficient, accurate spam filtering. We studied the recent technique called social network known as the Personalized & focused spam filter (SOAP) using Bayesian spam filtering technique. SOAP showing better results as compared to existing methods; however this method further improved in terms of accuracy, efficiency and complexity by this paper. We proposed extension to SOAP method by using RBF (Radial Basis Function) RBF neural network rather than naïve Bayes method for spam filtering. This new technique is named as I SOAP (Improved SOAP). Into the ISOAP, each node to their social mates, as example, the nodes which is from the distributed overlay through direct use of the social network links like the overlay links. Into the distributed manner every node are utilizing the ISOAP for collecting the data & checking the spam. The last spam filters which is concentrating on parsing keywords or the blacklist building was unlinked. Into the every node, Into the RBF Neural Network filtering ISOAP has been built the four elements that was management of adaptive trust, social nearness based spam filtering, notification of friend & spam filtering of social interest based. Into the final output of experiment were shows that for the spam filter our proposed approach is very efficient.
机译:在当今的日常生活中,重要的通信通过电子邮件和社交网站进行。无论垃圾邮件是电子邮件系统的主要问题。为了避免未经请求的电子邮件,提供了许多技术,目的是有效,准确地过滤垃圾邮件。我们使用贝叶斯垃圾邮件过滤技术研究了一种称为社交网络的最新技术,称为个性化和重点垃圾邮件过滤器(SOAP)。与现有方法相比,SOAP显示出更好的结果;然而,本文在准确性,效率和复杂性方面都进一步改进了该方法。我们建议通过使用RBF(径向基函数)RBF神经网络而不是朴素的贝叶斯方法来扩展SOAP方法来进行垃圾邮件过滤。这项新技术称为I SOAP(改进的SOAP)。进入ISOAP的每个节点都是其社交伙伴,例如,这些节点是通过直接使用社交网络链接(如覆盖链接)来自分布式覆盖的。以分布式的方式,每个节点都在利用ISOAP收集数据并检查垃圾邮件。最后一个专注于解析关键字或黑名单构建的垃圾邮件过滤器已取消链接。在每个节点中,到RBF神经网络过滤ISOAP已构建了四个要素,即自适应信任管理,基于社交近距离的垃圾邮件过滤,基于社交兴趣的好友通知和垃圾邮件过滤。实验的最终结果表明,对于垃圾邮件过滤器,我们提出的方法非常有效。

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