Insider Threat Detection Through Attributed Graph Clustering

A. Gamachchi, S. Boztaş
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引用次数: 19

Abstract

While most organizations continue to invest in traditional network defences, a formidable security challenge has been brewing within their own boundaries. Malicious insiders with privileged access in the guise of a trusted source have carried out many attacks causing far reaching damage to financial stability, national security and brand reputation for both public and private sector organizations. Growing exposure and impact of the whistleblower community and concerns about job security with changing organizational dynamics has further aggravated this situation. The unpredictability of malicious attackers, as well as the complexity of malicious actions, necessitates the careful analysis of network, system and user parameters correlated with insider threat problem. Thus it creates a high dimensional, heterogeneous data analysis problem in isolating suspicious users. This research work proposes an insider threat detection framework, which utilizes the attributed graph clustering techniques and outlier ranking mechanism for enterprise users. Empirical results also confirm the effectiveness of the method by achieving the best area under curve value of 0.7648 for the receiver operating characteristic curve.
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基于属性图聚类的内部威胁检测
虽然大多数组织继续投资传统的网络防御,但在他们自己的边界内已经酝酿了一个巨大的安全挑战。恶意的内部人士伪装成可信来源,拥有特权访问权限,实施了许多攻击,对公共和私营部门组织的金融稳定、国家安全和品牌声誉造成了深远的损害。告密者群体越来越多的曝光和影响,以及对组织动态变化带来的工作保障的担忧,进一步加剧了这种情况。由于恶意攻击者的不可预测性和恶意行为的复杂性,需要仔细分析与内部威胁问题相关的网络、系统和用户参数。因此,它在隔离可疑用户时产生了高维异构数据分析问题。本研究提出了一种针对企业用户的内部威胁检测框架,该框架利用了属性图聚类技术和离群值排序机制。实验结果也证实了该方法的有效性,获得了受试者工作特性曲线的最佳曲线下面积为0.7648。
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