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A model for anomaly classification in intrusion detection systems

机译:入侵检测系统中异常分类模型

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Intrusion Detection Systems (IDS) are traditionally divided into two types according to the detection methods they employ, namely (i) misuse detection and (ii) anomaly detection. Anomaly detection has been widely used and its main advantage is the ability to detect new attacks. However, the analysis of anomalies generated can become expensive, since they often have no clear information about the malicious events they represent. In this context, this paper presents a model for automated classification of alerts generated by an anomaly based IDS. The main goal is either the classification of the detected anomalies in well-defined taxonomies of attacks or to identify whether it is a false positive misclassified by the IDS. Some common attacks to computer networks were considered and we achieved important results that can equip security analysts with best resources for their analyses.
机译:传统上,入侵检测系统(IDS)根据它们所采用的检测方法分为两种类型,即(i)误用检测和(ii)异常检测。异常检测已被广泛使用,其主要优势是检测新攻击的能力。然而,产生的异常分析可能变得昂贵,因为它们通常没有关于他们所代表的恶意事件的清晰信息。在此上下文中,本文介绍了基于异常的IDS生成的警报自动分类的模型。主要目标是在攻击明确定义的攻击分类中的检测异常的分类,或者确定它是否是ids的错误积极错误分类。考虑了对计算机网络的一些常见攻击,我们实现了重要结果,可以为他们的分析提供最佳资源的安全分析师。

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