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Identifying Truly Suspicious Events and False Alarms Based on Alert Graph

机译:基于警报图识别真正的可疑事件和虚假警报

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As a cyber security protection technology, Intrusion Detection System (IDS), through real-time monitoring, issues alerts when detecting malicious events. It is one of the most widely used network security products, yet still has high false positive rates. False positive alerts will not only waste a lot of resources and time to process, but also have bad effects on the correlation analysis and attack path detection. Therefore, reducing the false positives rate is one of the important means to improve the performance of IDS. In this paper, we propose an effective model for false positives identification using gradient boosting tree models based on the analysis of security features of the IDS alerts. Firstly, we analyze alarms from aggregation and correlation by constructing a correlated alert graph based on IP addresses. Secondly, we design a novel bidirectional recursive feature elimination method combining with random forest for feature selection. Finally, the ensemble methods are employed from boosting tree models in our approach for better improvement.
机译:作为一种网络安全保护技术,入侵检测系统(IDS)通过实时监视在检测到恶意事件时发出警报。它是使用最广泛的网络安全产品之一,但误报率仍然很高。误报不仅会浪费大量的资源和处理时间,还会对相关性分析和攻击路径检测产生不良影响。因此,降低误报率是提高入侵检测系统性能的重要手段之一。在本文中,我们在分析IDS警报安全特征的基础上,提出了一种使用梯度提升树模型进行误报识别的有效模型。首先,我们通过基于IP地址构造相关的警报图来分析来自聚集和相关的警报。其次,结合随机森林设计了一种新颖的双向递归特征消除方法。最终,在我们的方法中,从提升树模型中采用了集成方法,以实现更好的改进。

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