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Analysis of vulnerability assessment results based on CAOS

机译:基于CAOS的漏洞评估结果分析

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摘要

Information system security must battle regularly with new threats that jeopardize the protection of those systems. Security tests have to be run periodically not only to identify vulnerabilities but also to control information systems, network devices, services and communications. Vulnerability assessments gather large amounts of data to be further analyzed by security experts, who recently have started using data analysis techniques to extract useful knowledge from these data. With the aim of assisting this process, this work presents CAOS, an evolutionary multiobjective approach to be used to cluster information of security tests. The process enables the clustering of the tested devices with similar vulnerabilities to detect hidden patterns, rogue or risky devices. Two different types of metrics have been selected to guide the discovery process in order to get the best clustering solution: general-purpose and specific-domain objectives. The results of both approaches are compared with the state-of-the-art single-objective clustering techniques to corroborate the benefits of the clustering results to security analysts.
机译:信息系统安全必须定期与危害这些系统保护的新威胁进行斗争。安全测试必须定期运行,不仅要确定漏洞,还必须控制信息系统,网络设备,服务和通信。漏洞评估会收集大量数据,以供安全专家进一步分析,安全专家最近开始使用数据分析技术从这些数据中提取有用的知识。为了协助这一过程,这项工作提出了CAOS,一种用于对安全测试信息进行聚类的进化多目标方法。该过程使具有相似漏洞的被测设备集群化,以检测隐藏的模式,流氓或有风险的设备。为了获得最佳的群集解决方案,已选择了两种不同类型的度量标准来指导发现过程:通用目标域和特定域目标。将这两种方法的结果与最新的单目标聚类技术进行比较,以证实聚类结果对安全分析人员的好处。

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