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Machine Learning Approach to Predict Computer Operating Systems Vulnerabilities

机译:机器学习方法预测计算机操作系统漏洞

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Information security is everyone’s concern. Computer systems are used to store sensitive data. Any weakness in their reliability and security makes them vulnerable. The Common Vulnerability Scoring System (CVSS) is a commonly used scoring system, which helps in knowing the severity of a software vulnerability. In this research, we show the effectiveness of common machine learning algorithms in predicting the computer operating systems security using the published vulnerability data in Common Vulnerabilities and Exposures and National Vulnerability Database repositories. The Random Forest algorithm has the best performance, compared to other algorithms, in predicting the computer operating system vulnerability severity levels based on precision, recall, and F-measure evaluation metrics. In addition, a predictive model was developed to predict whether a newly discovered computer operating system vulnerability would allow attackers to cause denial of service to the subject system.
机译:信息安全是每个人的关注点。计算机系统用于存储敏感数据。它们的可靠性和安全性上的任何弱点都使它们容易受到攻击。通用漏洞评分系统(CVSS)是一种常用的评分系统,有助于了解软件漏洞的严重性。在这项研究中,我们展示了常见的机器学习算法在使用“常见漏洞和披露”以及“国家漏洞数据库”存储库中发布的漏洞数据预测计算机操作系统安全性方面的有效性。与其他算法相比,随机森林算法在基于精度,召回率和F量度评估指标预测计算机操作系统漏洞严重性级别方面具有最佳性能。此外,还开发了一种预测模型,以预测新发现的计算机操作系统漏洞是否将使攻击者导致对目标系统的拒绝服务。

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