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A new adaptive intrusion detection system based on the intersection of two different classifiers

机译:基于两个不同分类器交集的新型自适应入侵检测系统

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Nowadays, the intrusion detection system (IDS) has become one of the most important weapons against cyber-attacks. The simple single-level IDS cannot detect both attack types and normal behaviour with high detection rate. To overcome this limit, we propose a new approach for intrusion detection. The idea of this paper is to use two different classifiers iteratively, where each-iteration represents one level in the built model. To ensure the adaptation of our model, we add a new level whenever the sum of new attacks and the rest of the training dataset reaches the threshold. To build our model, we have used Fuzzy Unordered Rule Induction Algorithm and Random Forests as classifiers. The experiment on the KDD99 dataset shows the high performance of our model that demonstrates its ability to detect the low frequent attack without losing their high performance in the detection of frequent attack and normal behaviour. Furthermore, our model gives the highest detection rate and the highest accuracy, compared with some models well known in the literature related to intrusion detection.
机译:如今,入侵检测系统(IDS)已成为抵御网络攻击的最重要武器之一。简单的单级IDS不能以较高的检测率同时检测攻击类型和正常行为。为了克服此限制,我们提出了一种新的入侵检测方法。本文的想法是迭代使用两个不同的分类器,其中每个迭代代表构建模型中的一个级别。为了确保我们模型的适应性,只要新攻击的总和与训练数据集的其余部分达到阈值,我们就会添加一个新级别。为了建立模型,我们使用了模糊无序规则归纳算法和随机森林作为分类器。在KDD99数据集上进行的实验显示了我们模型的高性能,该模型证明了其在检测频繁攻击和正常行为方面不会降低高性能的情况下,能够检测到频繁攻击的能力。此外,与一些与入侵检测相关的文献中众所周知的模型相比,我们的模型提供了最高的检测率和最高的准确性。

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