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A Reinforcement Learning Approach for Attack Graph Analysis

机译:攻击图分析的强化学习方法

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摘要

Attack graph approach is a common tool for the analysis of network security. However, analysis of attack graphs could be complicated and difficult depending on the attack graph size. This paper presents an approximate analysis approach for attack graphs based on Q-learning. First, we employ multi-host multi-stage vulnerability analysis (MulVAL) to generate an attack graph for a given network topology. Then we refine the attack graph and generate a simplified graph called a transition graph. Next, we use a Q-learning model to find possible attack routes that an attacker could use to compromise the security of the network. Finally, we evaluate the approach by applying it to a typical IT network scenario with specific services, network configurations, and vulnerabilities.
机译:攻击图方法是分析网络安全性的常用工具。但是,攻击图的分析可能会复杂且困难,具体取决于攻击图的大小。本文提出了一种基于Q学习的攻击图近似分析方法。首先,我们采用多主机多阶段漏洞分析(MulVAL)来生成给定网络拓扑的攻击图。然后,我们完善攻击图并生成一个简化的图,称为过渡图。接下来,我们使用Q学习模型来查找攻击者可能用来破坏网络安全性的可能攻击路径。最后,我们通过将其应用到具有特定服务,网络配置和漏洞的典型IT网络场景中来评估该方法。

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