基于用户偏好的垃圾邮件耦合行为分析

F. Jiang, Jin Gan, Yuanyuan Xu, Guandong Xu
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引用次数: 1

摘要

本文以社交网络或校园网为垃圾邮件社交网络场景,开发并实现了一种基于用户偏好的文本相似度耦合分析和基于虚拟元层用户的电子邮件网络的新型垃圾邮件发送系统。目前很少有实践利用社交网络来帮助过滤垃圾邮件。社交网络本质上有大量的账户特征和属性需要考虑。我们不考虑大量的用户账户特征,而是构建了一种新的元层电子邮件网络模型,该模型通过只考虑单个用户的行为作为用户偏好的指标来减少这些特征,并考虑这些常见的用户行为来构建基于社会行为的电子邮件网络。通过对每个单独的电子邮件内容的文本相似度测量的进一步分析结果,可以提高基于行为的虚拟电子邮件网络在用户偏好上的准确性。此外,针对该电子邮件网络开发了一个耦合选择模型,我们能够综合考虑所有相关因素/特征,并实际地向用户单独推荐电子邮件。实验结果表明,该方法可以获得更高的精度和准确度,并具有更好的电子邮件排序,有利于个性化偏好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Coupled behavioral analysis for user preference-based email spamming
In this paper, we develop and implement a new email spamming system leveraged by coupled text similarity analysis on user preference and a virtual meta-layer user-based email network, we take the social networks or campus LAN networks as the spam social network scenario. Fewer current practices exploit social networking initiatives to assist in spam filtering. Social network has essentially a large number of accounts features and attributes to be considered. Instead of considering large amount of users accounts features, we construct a new model called meta-layer email network which can reduce these features by only considering individual user's actions as an indicator of user preference, these common user actions are considered to construct a social behavior-based email network. With the further analytic results from text similarity measurements for each individual email contents, the behavior-based virtual email network can be improved with much higher accuracy on user preferences. Further, a coupled selection model is developed for this email network, we are able to consider all relevant factors/features in a whole and recommend the emails practically to the user individually. The experimental results show the new approach can achieve higher precision and accuracy with better email ranking in favor of personalised preference.
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