网络安全调查中路径追踪的深度神经网络方法

Clinton Daniel, T. Gill, A. Hevner, Matthew T. Mullarkey
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引用次数: 0

摘要

在安全运营中心(soc)内工作的安全分析师(sa)使用铺设可测量路径的方法对网络事件进行网络安全调查。这些路径可以作为研究在整个调查过程中由SA执行的认知任务转换的证据来源。深入了解这些路径可以帮助观察和理解如何评估和度量在调查过程中做出的关键决策,例如当SA从分析事件日志转变为观察威胁情报时。我们提出了一个框架,我们称之为网络分析过渡框架,它应用定量方法来评估和测量SA进行网络分析方法的过渡。该框架的新方法包括应用过程挖掘和深度神经网络输出,作为在进行网络安全调查时评估和测量SA性能的手段。
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A Deep Neural Network Approach to Tracing Paths in Cybersecurity Investigations
Security Analysts (SAs) operating within Security Operation Centers (SOCs) conduct cybersecurity investigations on cyber events using methods which pave a measurable path. These paths serve as a source of evidence to study the transitions of the cognitive tasks performed by the SA throughout the investigation. Insight into these paths can support the observation and understanding of how to evaluate and measure the critical decisions made during an investigation such as when a SA transitions from analyzing event logs to observing threat intelligence. We propose a framework we call the Cyber Analysis Transition Framework which applies a quantitative approach for evaluating and measuring the transitions of the SA conducting cyber analysis methods. The novel approach for this framework includes the application of process mining and deep neural network output as a means for evaluating and measuring a SA's performance while conducting cybersecurity investigations.
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