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Evaluation for Combination of Shuffle and Diversity on Moving Target Defense Strategy for Cloud Computing

机译:随机和多样性相结合的云计算移动目标防御策略评估

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摘要

Moving Target Defence (MTD) has been recently proposed and is an emerging proactive approach which provides an asynchronous defensive strategies. Unlike traditional security solutions that focused on removing vulnerabilities, MTD makes a system dynamic and unpredictable by continuously changing attack surface to confuse attackers. MTD can be utilized in cloud computing to address the cloud's security-related problems. There are many literature proposing MTD methods in various contexts, but it still lacks approaches to evaluate the effectiveness of proposed MTD method. In this paper, we proposed a combination of Shuffle and Diversity MTD techniques and investigate on the effects of deploying these techniques from two perspectives lying on two groups of security metrics (i) system risk: which is the cloud providers' perspective and (ii) attack cost and return on attack: which are attacker's point of view. Moreover, we utilize a scalable Graphical Security Model (GSM) to enhance the security analysis complexity. Finally, we show that combining MTD techniques can improve both aforementioned two groups of security metrics while individual technique cannot.
机译:移动目标防御(MTD)是最近提出的,它是一种新兴的主动方法,可提供异步防御策略。与专注于消除漏洞的传统安全解决方案不同,MTD通过不断更改攻击面以使攻击者感到困惑来使系统动态且不可预测。 MTD可用于云计算中,以解决与云安全相关的问题。许多文献提出了在各种情况下使用MTD方法的建议,但仍然缺乏评估所建议的MTD方法有效性的方法。在本文中,我们提出了洗牌和多样性MTD技术的组合,并从基于两组安全指标的两个角度研究了部署这些技术的效果:(i)系统风险:这是云提供商的观点;以及(ii)攻击成本和攻击收益:这是攻击者的观点。此外,我们利用可扩展的图形安全模型(GSM)来增强安全性分析的复杂性。最后,我们表明结合MTD技术可以同时改善上述两组安全性指标,而单独的技术则不能。

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