Ontology-based big data approach to automated penetration testing of large-scale heterogeneous systems

T. Stepanova, A. Pechenkin, D. Lavrova
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引用次数: 25

Abstract

Global corporations and government organizations are nowadays represented in cyberspace in the form of numerous large-scale heterogeneous information systems, which implement corresponding business, technological and other types of processes. This extends the set of security analysis tasks, stated for these infrastructures, and tangles already existing tasks. This paper addresses the challenge of increasing penetration testing automation level through the adoption of semi-automatic knowledge extraction from the huge amounts of heterogeneous regularly updated data. The proposed solution is based on the novel penetration testing ontology, which gives a holistic view on the results of security analysis. Designed ontology is evaluated within the penetration testing framework prototype and binds together the conceptual (process) abstraction level, addressed by security experts, and technical abstraction level, employed in modern security analysis tools and methods.
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基于本体的大规模异构系统自动化渗透测试方法
如今,全球公司和政府组织以大量大规模异构信息系统的形式在网络空间中表现出来,这些系统实现了相应的业务、技术和其他类型的流程。这扩展了针对这些基础设施的安全分析任务集,并混淆了已经存在的任务。本文通过采用从大量异构定期更新的数据中提取半自动知识来解决提高渗透测试自动化水平的挑战。该解决方案基于新的渗透测试本体,对安全分析的结果给出了一个整体的视图。设计的本体在渗透测试框架原型中进行评估,并将安全专家处理的概念(过程)抽象层与现代安全分析工具和方法中使用的技术抽象层绑定在一起。
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