Klm-PPSA:基于klm的分析和防止云环境的安全攻击:特邀论文

Nahid Eddermoug, A. Mansour, M. Sadik, Essaid Sabir, Mohamed Azmi
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引用次数: 3

摘要

云计算是许多组织采用的新兴技术,因为它具有不同的优点。不幸的是,尽管云提供了所有的好处,但与云平台相关的安全问题仍然存在,这可能会威胁到云的广泛采用。在这项研究中,我们提出了一个可扩展的模型,使用一种称为正则化类关联规则的准确且可解释的机器学习算法来分析和防止云环境应用层中的安全攻击。所提议的模型首先基于三个额外的安全因素$(k, l$和$m)$,其次基于传统的身份验证方法,如密码和生物识别技术,包括为授权用户授予对云服务/资源的访问权限的击键。最后,通过实例分析验证了该模型的有效性。最后通过仿真对模型的性能进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Klm-PPSA: Klm-based profiling and preventing security attacks for cloud environments: Invited Paper
Cloud computing is the newly emerged technology adopted by many organizations due to its different benefits. Unfortunately, despite all the benefits offered by the cloud, there are certain concerns regarding the security issues related to the cloud platform which can threaten its widespread adoption. In this study, we suggest a scalable model to profile and prevent security attacks in the application layer of a cloud environment using an accurate and interpretable machine learning algorithm called regularized class association rules. The proposed model is based, first, on three additional security factors $(k, l$ and $m)$, second, on the traditional authentication methods such as passwords and biometrics including keystroke to grant access to the cloud services/resources for an authorized user. Moreover, a case study of the proposal is given in order to validate the model and its usefulness. Eventually, a simulation was done to test the model performances.
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