一种无监督多检测器的恶意横向移动识别方法

Atul Bohara, Mohammad A. Noureddine, Ahmed M. Fawaz, W. Sanders
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引用次数: 43

摘要

基于横向移动的攻击越来越多地导致大型私人和政府网络的妥协,通常导致信息泄露或服务中断。这种攻击通常是缓慢而隐蔽的,通常会避开现有的安全产品。为了能够有效地检测此类攻击,我们提出了一种基于目标系统安全状态的基于图形的建模和异常主机行为各种指标的相关性的新方法。我们认为,无论使用何种特定的攻击媒介,攻击者通常会建立一个命令和控制通道来操作,并在目标系统中移动以提升其特权并到达敏感区域。据此,我们确定了指挥控制和横向移动活动的重要特征,并从内部和外部通信流量中提取了它们。通过对这些特征的分析,我们建议使用多种异常检测技术来识别被入侵的主机。这些方法包括主成分分析、k均值聚类和基于中位数绝对偏差的离群检测。我们通过在真实的企业网络数据集中使用注入的攻击流量来评估识别受损主机的准确性,用于各种攻击通信模型。实验结果表明,该方法检测感染宿主的准确率高,假阳性率低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Unsupervised Multi-Detector Approach for Identifying Malicious Lateral Movement
Lateral movement-based attacks are increasingly leading to compromises in large private and government networks, often resulting in information exfiltration or service disruption. Such attacks are often slow and stealthy and usually evade existing security products. To enable effective detection of such attacks, we present a new approach based on graph-based modeling of the security state of the target system and correlation of diverse indicators of anomalous host behavior. We believe that irrespective of the specific attack vectors used, attackers typically establish a command and control channel to operate, and move in the target system to escalate their privileges and reach sensitive areas. Accordingly, we identify important features of command and control and lateral movement activities and extract them from internal and external communication traffic. Driven by the analysis of the features, we propose the use of multiple anomaly detection techniques to identify compromised hosts. These methods include Principal Component Analysis, k-means clustering, and Median Absolute Deviation-based outlier detection. We evaluate the accuracy of identifying compromised hosts by using injected attack traffic in a real enterprise network dataset, for various attack communication models. Our results show that the proposed approach can detect infected hosts with high accuracy and a low false positive rate.
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