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Graph Based Framework for Malicious Insider Threat Detection

机译:基于图的恶意内部威胁检测框架

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摘要

While most security projects have focused on fending off attacks coming from outside the organizational boundaries, a real threat has arisen from the people who are inside those perimeter protections. Insider threats have shown their power by hugely affecting national security, financial stability, and the privacy of many thousands of people. What is in the news is the tip of the iceberg, with much more going on under the radar, and some threats never being detected. We propose a hybrid framework based on graphical analysis and anomaly detection approaches, to combat this severe cyber security threat. Our framework analyzes heterogeneous data in isolating possible malicious users hiding behind others. Empirical results reveal this framework to be effective in distinguishing the majority of users who demonstrate typical behavior from the minority of users who show suspicious behavior.
机译:尽管大多数安全项目都集中在抵御来自组织边界之外的攻击,但真正的威胁来自那些位于外围保护中的人员。内幕威胁已通过极大地影响国家安全,金融稳定和成千上万人的隐私而发挥了威力。新闻是冰山一角,更多的事情在雷达下进行,并且某些威胁从未被发现。我们提出了一种基于图形分析和异常检测方法的混合框架,以应对这种严重的网络安全威胁。我们的框架分析了异构数据,以隔离隐藏在其他用户之后的恶意用户。实验结果表明,该框架可以有效地区分大多数表现出典型行为的用户和少数表现出可疑行为的用户。

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