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Behavioral Service Graphs: A formal data-driven approach for prompt investigation of enterprise and internet-wide infections

机译:行为服务图:一种正式的数据驱动方法,可快速调查企业和互联网范围的感染

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摘要

The task of generating network-based evidence to support network forensic investigation is becoming increasingly prominent. Undoubtedly, such evidence is significantly imperative as it not only can be used to diagnose and respond to various network-related issues (i.e., performance bottlenecks, routing issues, etc.) but more importantly, can be leveraged to infer and further investigate network security intrusions and infections. In this context, this paper proposes a proactive approach that aims at generating accurate and actionable network-based evidence related to groups of compromised network machines (i.e., campaigns). The approach is envisioned to guide investigators to promptly pinpoint such malicious groups for possible immediate mitigation as well as empowering network and digital forensic specialists to further examine those machines using auxiliary collected data or extracted digital artifacts. On one hand, the promptness of the approach is successfully achieved by monitoring and correlating perceived probing activities, which are typically the very first signs of an infection or misdemeanors. On the other hand, the generated evidence is accurate as it is based on an anomaly inference that fuses data behavioral analytics in conjunction with formal graph theoretic concepts. We evaluate the proposed approach in two deployment scenarios, namely, as an enterprise edge engine and as a global capability in a security operations center model. The empirical evaluation that employs 10 GB of real botnet traffic and 80 GB of real darknet traffic indeed demonstrates the accuracy, effectiveness and simplicity of the generated network-based evidence. (C) 2017 The Author(s). Published by Elsevier Ltd on behalf of DFRWS.
机译:生成基于网络的证据以支持网络法医调查的任务变得越来越重要。毫无疑问,这样的证据非常重要,因为它不仅可以用于诊断和响应各种与网络相关的问题(例如,性能瓶颈,路由问题等),而且更重要的是,可以利用它来推断和进一步调查网络安全性。入侵和感染。在这种情况下,本文提出了一种主动的方法,旨在生成与受感染的网络机器(即活动)组有关的准确且可操作的基于网络的证据。可以预见,该方法将指导研究人员迅速查明此类恶意团体,以寻求可能的立即缓解,并授权网络和数字法医专家使用辅助收集的数据或提取的数字工件进一步检查这些机器。一方面,通过监视和关联感知的探测活动来成功实现该方法的迅速性,探测活动通常是感染或轻罪的最初迹象。另一方面,生成的证据是准确的,因为它基于异常推断,该异常推断将数据行为分析与正式的图形理论概念结合在一起。我们在两种部署方案中评估该提议的方法,即作为企业边缘引擎和作为安全运营中心模型中的全局功能。使用10 GB的实际僵尸网络流量和80 GB的实际暗网流量的经验评估确实证明了所生成的基于网络的证据的准确性,有效性和简单性。 (C)2017作者。由Elsevier Ltd代表DFRWS发布。

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