动态IT环境中适应安全策略的在线框架

K. Hammar, R. Stadler
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引用次数: 4

摘要

我们提出了一个在线框架,用于在动态IT环境中学习和更新安全策略。它包括三个组成部分:目标系统的数字孪生,它不断收集数据并评估学习策略;系统识别过程,根据收集到的数据定期估计系统模型;以及一个基于强化学习的策略学习过程。为了评估我们的框架,我们将其应用于一个涉及动态it基础设施的入侵防御用例。我们的结果表明,该框架可以自动调整安全策略以适应IT基础设施中的变化,并且优于最先进的方法。
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An Online Framework for Adapting Security Policies in Dynamic IT Environments
We present an online framework for learning and updating security policies in dynamic IT environments. It includes three components: a digital twin of the target system, which continuously collects data and evaluates learned policies; a system identification process, which periodically estimates system models based on the collected data; and a policy learning process that is based on reinforcement learning. To evaluate our framework, we apply it to an intrusion prevention use case that involves a dynamic IT infrastructure. Our results demonstrate that the framework automatically adapts security policies to changes in the IT infrastructure and that it outperforms a state-of-the-art method.
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