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Visualization techniques for computer network defense

机译:计算机网络防御的可视化技术

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摘要

Effective visual analysis of computer network defense (CND) information is challenging due to the volume and complexity of both the raw and analyzed network data. A typical CND is comprised of multiple niche intrusion detection tools, each of which performs network data analysis and produces a unique alerting output. The state-of-the-practice in the situational awareness of CND data is the prevalent use of custom-developed scripts by Information Technology (IT) professionals to retrieve, organize, and understand potential threat events. We propose a new visual analytics framework, called the Oak Ridge Cyber Analytics (ORCA) system, for CND data that allows an operator to interact with all detection tool outputs simultaneously. Aggregated alert events are presented in multiple coordinated views with timeline, cluster, and swarm model analysis displays. These displays are complemented with both supervised and semi-supervised machine learning classifiers. The intent of the visual analytics framework is to improve CND situational awareness, to enable an analyst to quickly navigate and analyze thousands of detected events, and to combine sophisticated data analysis techniques with interactive visualization such that patterns of anomalous activities may be more easily identified and investigated.
机译:由于原始和分析后的网络数据的数量和复杂性,对计算机网络防御(CND)信息进行有效的可视化分析具有挑战性。典型的CND由多个利基入侵检测工具组成,每个工具都执行网络数据分析并产生唯一的警报输出。 CND数据态势感知的最新状态是信息技术(IT)专业人员普遍使用定制开发的脚本来检索,组织和了解潜在威胁事件。我们为CND数据提出了一个新的可视化分析框架,称为Oak Ridge网络分析(ORCA)系统,该框架允许操作员同时与所有检测工具的输出进行交互。聚集的警报事件以时间轴,聚类和群体模型分析显示形式显示在多个协调视图中。这些显示辅以监督和半监督机器学习分类器。视觉分析框架的目的是提高CND态势感知能力,使分析人员能够快速导航和分析数千个检测到的事件,并将复杂的数据分析技术与交互式可视化相结合,从而可以更轻松地识别和发现异常活动的模式。调查。

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