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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Social network based filtering of unsolicited messages from e-mails
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Social network based filtering of unsolicited messages from e-mails

机译:基于社交网络从电子邮件中的未经请求消息过滤

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摘要

Nowadays Electronic communication is an important medium and an inevitable way for official communication. So, the email classification into spam or ham gains a lot of importance. Commonly used approaches are text-based or collaborative methods for spam detection. However, not only choosing the right classifier is very difficult but, handling poison attacks and impersonation attacks are also very important. The proposed model considers a powerful spam filtering technique which includes both social network and email factors in addition to the email data analysis for spam classification. The incoming emails are subjected to header parsing for finding the trust and reputation of senders with respect to the receivers and keyword parsing is applied to find the topic of interest using LDA with Gibbs Sampling method. Optical Character Recognition (OCR) method is applied to find the image spam e-mails. Degree and strength of the connection between the users from the social networks are also considered along with the email data factors for better message classification. Logistic Regression is used to combine all the independent input features to get an effective result. The experimental results and comparisons with the existing models vividly show the significant performance of the proposed classifier.
机译:如今电子通信是官方沟通的重要媒介和必然的方式。因此,电子邮件分类为垃圾邮件或火腿获得了很多重要性。常用的方法是基于文本的或用于垃圾邮件检测的协作方法。然而,不仅选择正确的分类器是非常困难的,但处理毒药攻击和模拟攻击也非常重要。该模型考虑了强大的垃圾邮件过滤技术,包括社交网络和电子邮件因素,除了用于垃圾邮件分类的电子邮件数据分析。传入的电子邮件遭到标题解析,用于查找发送者关于接收者的信任和声誉,并应用关键字解析来使用LDA与Gibbs采样方法找到感兴趣的主题。应用光学字符识别(OCR)方法来查找图像垃圾邮件电子邮件。来自社交网络的用户之间的连接的程度和强度也被考虑以及用于更好的消息分类的电子邮件数据因子。 Logistic回归用于组合所有独立的输入功能以获得有效的结果。实验结果和与现有模型的比较生动地显示了所提出的分类器的显着性能。

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