Behavior-based Community Detection: Application to Host Assessment In Enterprise Information Networks

Cheng Cao, Zhengzhang Chen, James Caverlee, L. Tang, Chen Luo, Zhichun Li
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引用次数: 18

Abstract

Community detection in complex networks is a fundamental problem that attracts much attention across various disciplines. Previous studies have been mostly focusing on external connections between nodes (i.e., topology structure) in the network whereas largely ignoring internal intricacies (i.e., local behavior) of each node. A pair of nodes without any interaction can still share similar internal behaviors. For example, in an enterprise information network, compromised computers controlled by the same intruder often demonstrate similar abnormal behaviors even if they do not connect with each other. In this paper, we study the problem of community detection in enterprise information networks, where large-scale internal events and external events coexist on each host. The discovered host communities, capturing behavioral affinity, can benefit many comparative analysis tasks such as host anomaly assessment. In particular, we propose a novel community detection framework to identify behavior-based host communities in enterprise information networks, purely based on large-scale heterogeneous event data. We continue proposing an efficient method for assessing host's anomaly level by leveraging the detected host communities. Experimental results on enterprise networks demonstrate the effectiveness of our model.
基于行为的社区检测:在企业信息网络主机评估中的应用
复杂网络中的社区检测是一个受到各学科广泛关注的基本问题。以往的研究主要集中在网络中节点之间的外部连接(即拓扑结构),而很大程度上忽略了每个节点的内部复杂性(即局部行为)。一对没有任何交互的节点仍然可以共享类似的内部行为。例如,在企业信息网络中,被同一入侵者控制的受感染计算机即使彼此不连接,也经常表现出类似的异常行为。本文研究了企业信息网络中大规模内部事件和外部事件同时存在的社区检测问题。发现的宿主群落,捕捉行为亲和力,可以有利于许多比较分析任务,如主机异常评估。特别是,我们提出了一种新的社区检测框架,纯粹基于大规模异构事件数据来识别企业信息网络中基于行为的主机社区。我们继续提出一种有效的方法,通过利用检测到的宿主社区来评估宿主的异常水平。在企业网络上的实验结果证明了该模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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