用于识别在线社交网络中的垃圾邮件发送者的基于社区的功能

S. Y. Bhat, M. Abulaish
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引用次数: 90

摘要

随着在线社交网络(Online Social Networks, OSNs)的普及,人们常常面临着如何处理社交网络中不良用户及其恶意活动的挑战。通过osn进行的最常见的恶意活动形式是垃圾邮件,其中bot(假用户)向社交网络的合法用户传播内容、恶意软件/病毒等。此类活动背后的常见动机包括网络钓鱼、诈骗、病毒式营销等,而收件人并不愿意接受这些活动。因此,设计识别osn中的垃圾邮件发送者(垃圾邮件帐户)的技术和方法是一项非常需要的任务。为了利用合法用户社区形成的社会网络特征,本文提出了一个基于社区的框架来识别osn中的垃圾邮件制造者。该框架利用基于社区的OSN用户特征来学习分类模型,用于识别垃圾邮件账户。在模拟垃圾邮件发送者的真实数据集上进行的初步实验表明,所提出的方法是有希望的,并且使用基于社区的OSN用户节点特征可以提高垃圾邮件发送者和合法用户的分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Community-based features for identifying spammers in Online Social Networks
The popularity of Online Social Networks (OSNs) is often faced with challenges of dealing with undesirable users and their malicious activities in the social networks. The most common form of malicious activity over OSNs is spamming wherein a bot (fake user) disseminates content, malware/viruses, etc. to the legitimate users of the social networks. The common motives behind such activity include phishing, scams, viral marketing and so on which the recipients do not indent to receive. It is thus a highly desirable task to devise techniques and methods for identifying spammers (spamming accounts) in OSNs. With an aim of exploiting social network characteristics of community formation by legitimate users, this paper presents a community-based framework to identify spammers in OSNs. The framework uses community-based features of OSN users to learn classification models for identification of spamming accounts. The preliminary experiments on a real-world dataset with simulated spammers reveal that proposed approach is promising and that using community-based node features of OSN users can improve the performance of classifying spammers and legitimate users.
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