Adaptive MTD Security using Markov Game Modeling

2019 International Conference on Computing, Networking and Communications (ICNC)(2018)

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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.
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关键词
distributed networking,computing elements,security state,security experts,packet filtering,Intrusion Detection Systems,reactive security mechanism,Moving Target Defense,proactive security framework,monitoring attacks,multistage attacks,target software vulnerabilities,cloud network,multistage attack scenario,two-player zero-sum Markov Game,network administrator,attack graphs,transition probabilities,expert knowledge,Common Vulnerability Scoring System,attack policy,adaptive MTD security,Markov Game modeling,critical information,large scale cloud networks,sub-optimal policy,CVSS
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