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Exploring Adversarial Properties of Insider Threat Detection

机译:探索内部威胁检测的对抗特性

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Insider threat represents a major cybersecurity challenge to companies and government agencies. The challenges in insider threat detection include unbalanced data, limited ground truth, and possible user behaviour changes. This research presents an unsupervised machine learning (ML) based anomaly detection approach for insider threat detection. We employ two ML methods with different working principles, specifically auto-encoder and isolation forest, and explore various representations of data with temporal information. Evaluation results show that the approach allows learning from unlabelled data under adversarial conditions for insider threat detection with a high detection and a low false positive rate. For example, 60% of malicious insiders are detected under 0.1% investigation budget. Furthermore, we explore the ability of the proposed approach to generalize for detecting unseen anomalous behaviours in different datasets, i.e. robustness. Comparisons with other work in the literature confirm the effectiveness of the proposed approach.
机译:内部威胁是公司和政府机构面临的重大网络安全挑战。内部威胁检测中的挑战包括数据不平衡,基本事实有限以及可能的用户行为更改。这项研究提出了一种用于内部威胁检测的基于无监督机器学习(ML)的异常检测方法。我们采用两种具有不同工作原理的ML方法,特别是自动编码器和隔离林,并探索具有时间信息的数据的各种表示形式。评估结果表明,该方法允许在对抗条件下从未标记的数据中进行内部威胁检测,具有较高的检测率和较低的误报率。例如,在0.1%的调查预算下检测到60%的恶意内部人员。此外,我们探索了所提出方法概括检测不同数据集中看不见的异常行为(即鲁棒性)的能力。与文献中其他工作的比较证实了该方法的有效性。

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