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An intrusion detection and alert correlation approach based on revising probabilistic classifiers using expert knowledge

机译:基于使用专家知识修正概率分类器的入侵检测和警报关联方法

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摘要

Bayesian networks are important knowledge representation tools for handling uncertain pieces of information. The success of these models is strongly related to their capacity to represent and handle dependence relations. Some forms of Bayesian networks have been successfully applied in many classification tasks. In particular, naive Bayes classifiers have been used for intrusion detection and alerts correlation. This paper analyses the advantage of adding expert knowledge to probabilistic classifiers in the context of intrusion detection and alerts correlation. As examples of probabilistic classifiers, we will consider the well-known Naive Bayes, Tree Augmented Na?ve Bayes (TAN), Hidden Naive Bayes (HNB) and decision tree classifiers. Our approach can be applied for any classifier where the outcome is a probability distribution over a set of classes (or decisions). In particular, we study how additional expert knowledge such as "it is expected that 80 % of traffic will be normal" can be integrated in classification tasks. Our aim is to revise probabilistic classifiers' outputs in order to fit expert knowledge. Experimental results show that our approach improves existing results on different benchmarks from intrusion detection and alert correlation areas.
机译:贝叶斯网络是用于处理不确定信息的重要知识表示工具。这些模型的成功与它们表示和处理依赖关系的能力密切相关。某些形式的贝叶斯网络已成功应用于许多分类任务。特别是,朴素的贝叶斯分类器已用于入侵检测和警报关联。本文分析了在入侵检测和警报关联的情况下向概率分类器添加专家知识的优势。作为概率分类器的示例,我们将考虑著名的朴素贝叶斯,树增强朴素贝叶斯(TAN),隐藏朴素贝叶斯(HNB)和决策树分类器。我们的方法可以应用于任何结果是一组类别(或决策)上的概率分布的分类器。尤其是,我们研究如何将其他专家知识(例如“预计80%的流量将是正常的”)整合到分类任务中。我们的目的是修改概率分类器的输出,以适应专家的知识。实验结果表明,我们的方法在入侵检测和警报关联区域的不同基准上改进了现有结果。

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