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A Graded Approach to Network Forensics with Privacy Concerns

机译:具有隐私问题的网络取证的分级方法

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Anomaly detection in recent or historic traffic traces is a typical approach in applying network forensics to analyze previous security incidents in networks, as well as for real-time network monitoring for detecting intrusions or other security incidents without known signatures. However, even in the aftermath of a security incident, privacy expectations of legitimate users remain a primary concern. In this paper, we describe our findings regarding the preference of network administrators for releasing data. We then go on to describe a methodology that balances the motivations of preserving maximum privacy for legitimate users and obtaining maximum possible information regarding potentially anomalous behavior. Our methodology is based on a graded approach to progressing from highly anonymized data to further disclosure for targeted traffic streams. In particular, we show that it is possible to obtain significant progress from highly aggregated data that is typically considered essentially valueless for the purpose of anomaly detection. We present the result of these first steps as executed on a real enterprise network, showing how the graded approach can work in practice.
机译:最近或历史流量跟踪中的异常检测是应用网络取证分析网络中以前的安全事件,以及实时网络监视以检测入侵或其他没有已知特征的安全事件的典型方法。但是,即使在发生安全事件后,合法用户对隐私的期望仍是主要问题。在本文中,我们描述了有关网络管理员偏好发布数据的发现。然后,我们继续描述一种方法,该方法平衡了为合法用户保留最大私密性和获取有关潜在异常行为的最大可能信息的动机。我们的方法基于分级方法,从高度匿名的数据发展到针对目标流量的进一步披露。特别是,我们表明,可以从高度聚合的数据中获得重大进展,这些数据通常出于异常检测的目的通常被认为是毫无价值的。我们介绍了在实际企业网络上执行的第一步的结果,显示了分级方法如何在实践中起作用。

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