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An analysis of supervised tree based classifiers for intrusion detection system

机译:基于监督树的入侵检测系统分类器分析

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Due to increase in intrusion incidents over internet, many network intrusion detection systems are developed to prevent network attacks. Data mining, pattern recognition and classification methods are used to classify network events as a normal or anomalous one. This paper is aimed at evaluating different tree based classification algorithms that classify network events in intrusion detection systems. Experiments are conducted on NSL-KDD 99 dataset. Dimensionality of the attribute of the dataset is reduced. The results show that RandomTree model holds the highest degree of accuracy and reduced false alarm rate. RandomTree model is evaluated with other leading intrusion detection models to determine its better predictive accuracy.
机译:由于Internet上入侵事件的增加,因此开发了许多网络入侵检测系统来防止网络攻击。数据挖掘,模式识别和分类方法用于将网络事件分类为正常事件或异常事件。本文旨在评估不同的基于树的分类算法,该算法对入侵检测系统中的网络事件进行分类。实验是在NSL-KDD 99数据集上进行的。数据集属性的维数减少。结果表明,RandomTree模型具有最高的准确性,并降低了误报率。与其他领先的入侵检测模型一起评估RandomTree模型,以确定其更好的预测准确性。

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