使用顺序规则挖掘检测云环境中的恶意内部人员

L. Nkosi, Paul Tarwireyi, M. Adigun
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引用次数: 9

摘要

云计算是一个不断发展的范例,它为云用户提供了很多好处。尽管云计算可以为企业和个人提供潜在的好处,但安全性仍然是阻碍采用这种模式的日益增长的担忧之一。研究人员已经发现并处理了云计算的许多安全威胁。然而,内部威胁仍然是主要问题之一。来自恶意内部人员的威胁经常被许多研究人员列为危险威胁。然而,这种威胁并没有得到应有的重视,因为许多组织对外部威胁比内部威胁更加小心。本文讨论了一种方法,可以帮助识别内部人员的恶意行为,这可能导致攻击。采用规则学习算法学习用户的行为模式,建立用户配置文件。然后使用匹配算法将用户的历史行为与当前行为进行匹配,以识别在系统中伪装成正常用户的用户。所获得的结果表明,可以通过观察其行为模式来识别在系统中伪装的内部人员。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting a malicious insider in the cloud environment using sequential rule mining
Cloud computing is a growing paradigm that offers a lot of benefits to cloud users. Despite the potential benefits that cloud computing could offer to business and individuals, security remains one of the growing concerns that are hindering the adoption of this paradigm. Researchers have identified and dealt with many security threats to cloud computing. However, insider threats still remain as one of the major concerns. Threats from malicious insiders are often listed as dangerous threats by many researchers. However, this threat has not received the attention it deserves because many organizations turn out to be extra careful about external threats than insider threats. This paper discusses an approach that can help in identifying insiders behaving in a malicious way, which may lead to an attack. A rule learning algorithm was used in learning the behavior pattern of users, in order to build user profiles. A Matching algorithm was then used to match the historical behavior of the user with the current behavior, in order to identify users that masquerade in the system as normal users. The obtained results show that it was possible to identify insiders that masquerade in the system by observing their behavior patterns.
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