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A Machine Learning-based Approach for Automated Vulnerability Remediation Analysis

机译:基于机器学习的自动漏洞修复分析方法

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Security vulnerabilities in firmware/software pose an important threat ton power grid security, and thus electric utility companies should quickly decide how to remediate vulnerabilities after they are discovered. Making remediation decisions is a challenging task in the electric industry due to the many factors to consider, the balance to maintain between patching and service reliability, and the large amount of vulnerabilities to deal with. Unfortunately, remediation decisions are current manually made which take a long time. This increases security risks and incurs high cost of vulnerability management. In this paper, we propose a machine learning-based automation framework to automate remediation decision analysis for electric utilities. We apply it to an electric utility and conduct extensive experiments over two real operation datasets obtained from the utility. Results show the high effectiveness of the solution.
机译:固件/软件中的安全漏洞构成了电网安全的重要威胁,因此,电力公司应在发现漏洞后迅速决定如何补救。由于要考虑许多因素,要在修补和服务可靠性之间保持平衡,并且要处理大量漏洞,因此制定补救决策对于电力行业而言是一项艰巨的任务。不幸的是,补救决定是当前人工做出的,需要花费很长时间。这增加了安全风险,并导致漏洞管理的高昂成本。在本文中,我们提出了一种基于机器学习的自动化框架,以自动化电力公司的补救决策分析。我们将其应用于电力公司,并对从该公司获得的两个实际操作数据集进行了广泛的实验。结果表明该解决方案非常有效。

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