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Adaptive MTD Security using Markov Game Modeling

机译:使用Markov博弈建模的自适应MTD安全性

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摘要

Large scale cloud networks consist of distributed networking and computing elements that process critical information and thus security is a key requirement for any environment. Unfortunately, assessing the security state of such networks is a challenging task and the tools used in the past by security experts such as packet filtering, firewall, Intrusion Detection Systems (IDS) etc., provide a reactive security mechanism. In this paper, we introduce a Moving Target Defense (MTD) based proactive security framework for monitoring attacks which lets us identify and reason about multi-stage attacks that target software vulnerabilities present in a cloud network. We formulate the multi-stage attack scenario as a two-player zero-sum Markov Game (between the attacker and the network administrator) on attack graphs. The rewards and transition probabilities are obtained by leveraging the expert knowledge present in the Common Vulnerability Scoring System (CVSS). Our framework identifies an attacker's optimal policy and places countermeasures to ensure that this attack policy is always detected, thus forcing the attacker to use a sub-optimal policy with higher cost.
机译:大规模云网络由处理关键信息的分布式网络和计算元素组成,因此安全性是任何环境的关键要求。不幸的是,评估此类网络的安全状态是一项艰巨的任务,安全专家过去使用的工具(例如数据包筛选,防火墙,入侵检测系统(IDS)等)提供了一种反应性的安全机制。在本文中,我们介绍了一种基于移动目标防御(MTD)的主动安全框架来监视攻击,该框架使我们能够识别和推理针对以云网络中存在的软件漏洞为目标的多阶段攻击。我们将多阶段攻击方案表述为攻击图上的两人零和马尔可夫游戏(在攻击者和网络管理员之间)。通过利用常见漏洞评分系统(CVSS)中存在的专业知识,可以获得奖励和过渡概率。我们的框架确定了攻击者的最佳策略并采取了对策,以确保始终检测到该攻击策略,从而迫使攻击者使用成本更高的次优策略。

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