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Bayesian Event Classification for Intrusion Detection

机译:入侵检测贝叶斯事件分类

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Intrusion detection systems (IDSs) attempt to identify attacks by comparing collected data to predefined signatures known to be malicious (misuse-based IDSs) or to a model of legal behavior (anomaly-based IDSs). Anomaly-based approaches have the advantage of being able to detect previously unknown attacks, but they suffer from the difficulty of building robust models of acceptable behavior, which may result in a large number of false alarms. Almost all current anomaly-based intrusion detection systems classify an input event as normal or anomalous by analyzing its features, utilizing a number of different models. A decision for an input event is made by aggregating the results of all employed models. We have identified two reasons for the large number of false alarms, caused by incorrect classification of events in current systems. One is the simplistic aggregation of model outputs in the decision phase. Often, only the sum of the model results is calculated and compared to a threshold. The other reason is the lack of integration of additional information into the decision process. This additional information can be related to the models, such as the confidence in a model's output, or can be extracted from external sources. To mitigate these shortcomings, we propose an event classification scheme that is based on Bayesian networks. Bayesian networks improve the aggregation of different model outputs and allow one to seamlessly incorporate additional information. Experimental results show that the accuracy of the event classification process is significantly improved using our proposed approach.
机译:入侵检测系统(IDS)尝试通过将收集的数据与已知恶意(基于滥用的IDS)或法律行为模型(基于异常的IDS)来识别攻击来识别攻击。基于异常的方法具有能够检测到以前未知的攻击的优点,但它们遭受建立可接受行为的强大模型的难度,这可能导致大量的误报。几乎所有当前的基于异常的入侵检测系统通过分析其特征,通过分析许多不同的型号将输入事件分类为正常或异常。通过汇总所有采用模型的结果来进行输入事件的决定。我们已经确定了大量误报的原因,由当前系统中的事件的错误分类不正确。一个是决策阶段模型输出的简单聚合。通常,仅计算模型结果的总和并将其与阈值进行比较。另一个原因是缺乏将附加信息集成到决策过程中。该附加信息可以与模型相关,例如模型输出的置信度,或者可以从外部源中提取。为减轻这些缺点,我们提出了一种基于贝叶斯网络的事件分类方案。贝叶斯网络改善了不同模型输出的聚合,并允许其中无缝地合并其他信息。实验结果表明,使用我们提出的方法,事件分类过程的准确性得到了显着改善。

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