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Machine learning based Insider Threat Modelling and Detection

机译:基于机器学习的内部威胁建模和检测

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Recently, malicious insider attacks represent one of the most damaging threats to companies and government agencies. This paper proposes a new framework in constructing a user-centered machine learning based insider threat detection system on multiple data granularity levels. System evaluations and analysis are performed not only on individual data instances but also on normal and malicious insiders, where insider scenario specific results and delay in detection are reported and discussed. Our results show that the machine learning based detection system can learn from limited ground truth and detect new malicious insiders with a high accuracy.
机译:最近,恶意内部攻击是对公司和政府机构的最具破坏性的威胁之一。本文提出了一个在多数据粒度级别上构建以用户为中心的基于机器学习的内部威胁检测系统的新框架。系统评估和分析不仅在单个数据实例上进行,而且还对正常的和恶意的内部人员进行,其中报告并讨论了特定于内部人员情况的结果和检测延迟。我们的结果表明,基于机器学习的检测系统可以从有限的地面事实中学习,并可以高精度检测新的恶意内部人员。

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