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A Trust Aware Unsupervised Learning Approach for Insider Threat Detection

机译:信任意识到内部威胁检测的无监督学习方法

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With the rapidly increasing connectivity in cyberspace, Insider Threat is becoming a huge concern. Insider threat detection from system logs poses a tremendous challenge for human analysts. Analyzing log files of an organization is a key component of an insider threat detection and mitigation program. Emerging machine learning approaches show tremendous potential for performing complex and challenging data analysis tasks that would benefit the next generation of insider threat detection systems. However, with huge sets of heterogeneous data to analyze, applying machine learning techniques effectively and efficiently to such a complex problem is not straightforward. In this paper, we extract a concise set of features from the system logs while trying to prevent loss of meaningful information and providing accurate and actionable intelligence. We investigate two unsupervised anomaly detection algorithms for insider threat detection and draw a comparison between different structures of the system logs including daily dataset and periodically aggregated one. We use the generated anomaly score from the previous cycle as the trust score of each user fed to the next period's model and show its importance and impact in detecting insiders. Furthermore, we consider the psychometric score of users in our model and check its effectiveness in predicting insiders. As far as we know, our model is the first one to take the psychometric score of users into consideration for insider threat detection. Finally, we evaluate our proposed approach on CERT insider threat dataset (v4.2) and show how it outperforms previous approaches.
机译:随着网络空间的迅速增加,内部威胁正在成为一个巨大的关注。系统日志的内幕威胁检测为人类分析师带来了巨大的挑战。分析组织的日志文件是内幕威胁检测和缓解计划的关键组成部分。新兴机器学习方法表明,执行复杂和具有挑战性的数据分析任务的巨大潜力,这些任务将受益于下一代内部内部威胁检测系统。然而,利用巨大的异构数据来分析,有效且有效地将机器学习技术应用于这种复杂的问题并不简单。在本文中,我们从系统日志中提取了一套简洁的功能,同时试图防止丢失有意义的信息并提供准确和可操作的智能。我们调查了两个无监督的异常检测算法,用于内部人威胁检测,并绘制了系统日志的不同结构之间的比较,包括每日数据集并定期聚合一个。我们使用前周期的生成的异常分数作为馈送到下一个时期模型的每个用户的信量分数,并在检测项目中显示其重要性和影响。此外,我们考虑了我们模型中用户的心理计量,并检查其在预测内部人的有效性。据我们所知,我们的模型是第一个考虑内部人威胁检测的用户的心理评分。最后,我们在Cert Insider威胁数据集(V4.2)上评估了我们提出的方法,并展示了它如何优于以前的方法。

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