Machine learning on knowledge graphs for context-aware security monitoring

J. Garrido, D. Dold, Johannes Frank
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引用次数: 16

Abstract

Machine learning techniques are gaining attention in the context of intrusion detection due to the increasing amounts of data generated by monitoring tools, as well as the sophistication displayed by attackers in hiding their activity. However, existing methods often exhibit important limitations in terms of the quantity and relevance of the generated alerts. Recently, knowledge graphs are finding application in the cybersecurity domain, showing the potential to alleviate some of these drawbacks thanks to their ability to seamlessly integrate data from multiple domains using human-understandable vocabularies. We discuss the application of machine learning on knowledge graphs for intrusion detection and experimentally evaluate a link-prediction method for scoring anomalous activity in industrial systems. After initial unsupervised training, the proposed method is shown to produce intuitively well-calibrated and interpretable alerts in a diverse range of scenarios, hinting at the potential benefits of relational machine learning on knowledge graphs for intrusion detection purposes.
基于知识图的机器学习,用于上下文感知的安全监控
由于监控工具生成的数据量不断增加,以及攻击者在隐藏其活动方面表现出的复杂性,机器学习技术在入侵检测领域受到越来越多的关注。但是,现有的方法在生成警报的数量和相关性方面往往有很大的局限性。最近,知识图谱在网络安全领域得到了应用,由于它们能够使用人类可理解的词汇表无缝集成来自多个领域的数据,因此显示出缓解这些缺陷的潜力。我们讨论了机器学习在知识图上用于入侵检测的应用,并实验评估了一种用于工业系统异常活动评分的链接预测方法。在最初的无监督训练之后,所提出的方法被证明可以在各种场景中产生直观的校准和可解释的警报,这暗示了知识图上关系机器学习用于入侵检测目的的潜在好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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