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首页> 外文期刊>ACM transactions on privacy and security >Adaptive Cyber Defense Against Multi-Stage Attacks Using Learning-Based POMDP
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Adaptive Cyber Defense Against Multi-Stage Attacks Using Learning-Based POMDP

机译:使用基于学习的POMDP对抗多阶段攻击的自适应网络防御

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摘要

Growing multi-stage attacks in computer networks impose significant security risks and necessitate the development of effective defense schemes that are able to autonomously respond to intrusions during vulnerability windows. However, the defender faces several real-world challenges, e.g., unknown likelihoods and unknown impacts of successful exploits. In this article, we leverage reinforcement learning to develop an innovative adaptive cyber defense to maximize the cost-effectiveness subject to the aforementioned challenges. In particular, we use Bayesian attack graphs to model the interactions between the attacker and networks. Then we formulate the defense problem of interest as a partially observable Markov decision process problem where the defender maintains belief states to estimate system states, leverages Thompson sampling to estimate transition probabilities, and utilizes reinforcement learning to choose optimal defense actions using measured utility values. The algorithm performance is verified via numerical simulations based on real-world attacks.
机译:计算机网络中的多阶段攻击越来越大征收了大量的安全风险,并需要开发能够在漏洞窗口中自主响应入侵的有效防御计划的发展。然而,后卫面临着几种现实世界的挑战,例如,成功利用的未知可能性和未知的影响。在本文中,我们利用加强学习来开发创新的自适应网络防御,以最大限度地提高上述挑战的成本效益。特别是,我们使用贝叶斯攻击图来模拟攻击者和网络之间的交互。然后,我们将兴趣的防御问题作为部分可观察的马尔可夫决策过程问题,后卫维持信仰状态估计系统状态,利用汤普森采样来估计过渡概率,并利用钢筋学习使用测量的效用值选择最佳防御动作。通过基于真实攻击的数值模拟来验证算法性能。

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