基于映射的社交网络垃圾邮件检测研究

Balogun Abiodun Kamoru, Azmi Jaafar, Masrah Azrifah Azmi Murad
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引用次数: 6

摘要

Facebook、Twitter和新浪微博等社交网络对于接触全球数百万用户已经变得越来越重要。因此,垃圾邮件发送者越来越多地使用这种网络来传播垃圾邮件。现有的过滤技术研究,如协同过滤和行为分析过滤,能够显著减少垃圾邮件。近年来,在线社交网络已成为个人和组织之间最重要的交流媒介。不幸的是,在交流欲望的驱使下,欺诈者或垃圾邮件发送者制造了欺骗性的垃圾邮件或未经请求的商业电子邮件(UCE)。诈骗者或垃圾邮件发送者的活动误导了潜在用户和受害者,重塑了他们在社交网络平台上的个人生活和一般交流。本研究的目的是了解、分类和分析社交网络垃圾邮件检测的现有研究,重点从用户、服务提供商和安全分析师的角度评估垃圾邮件检测的总体框架及其架构框架的方法和要素。本文对几种基于社交网络的垃圾邮件检测技术和方法进行了系统的映射研究,以衡量和评估社交网络垃圾邮件检测的总体框架。我们发现有17个建议可用于评估社交网络上的垃圾邮件检测,14个建议可用于评估用户、服务提供商和从业者。对社会网络上的垃圾邮件检测的各种要素进行了评估和讨论。在社交网络上的垃圾邮件检测方案中,只有少数得到了完善的定义。初步研究的质量评估发现了许多局限性,并提出了在社交网络上改进和增加对垃圾邮件检测的接受度的可能性的指导方针。然而,对社交网络上的垃圾邮件检测和框架进行定量表征和评估仍然是一个挑战。鉴于此,我们必须努力在未来实现一种更好的垃圾邮件检测方法,这种方法将不需要问题异常检测、故障检测、恶意软件检测和入侵检测。
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A Mapping Study to Investigate Spam Detection on Social Networks
Social networks such as Facebook, Twitter and SinaWeibo have become increasingly important for reaching millions of user globally. Consequently, spammers are increasing using such networks for propagating spam. Existing research on filtering techniques such as collaborative filters and behavioral analysis filters are able to significantly reduce spam. In recent years, online social networks have become the most important medium of communication among individual and organization to interact. Unfortunately, driven by the desire to communicate, fraudster or spammers have produced deceptive spam or unsolicited commercial email(UCE). The fraudsters’ or spammer activities mislead potential users and victims reshaping their individual life and general communication on social network platform. The aim of this study is to understand, classify and analyze existing research in spam detection on social networks, focusing on approaches and elements that are used to evaluate the general framework of spam detection and its architectural framework from the users perspective, service provider and security analyst ‘s point of view. This paper presents a systematic mapping study of several spam detection techniques and approaches on social networks that were proposed to measure to evaluate the general framework of spam detection on social networks. We found 17 proposals that could be applied to evaluate spam detection on social networks, while 14 proposals could be applied to evaluate the users, service providers and practitioners. Various elements of spam detection on social networks that were measured are reviewed and discussed. Only a few of the proposed spam detection on social networks are soundly defined. The quality assessment of the primary studies detected many limitations and suggested guidelines for possibilities for improving and increasing the acceptance of spam detection on social networks. However, it remains a challenge to characterize and evaluate a spam detection and framework on social networks quantitatively. For this fact, much effort must be made to achieve a better spam detection approach in the future that will be devoid of problem anomaly detection, fault detection, malware detection and intrusion detection General Terms Spam detection, Security, Mapping study,Spam detection metrics.
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