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An Anomaly Intrusion Detection System Using C5 Decision Tree Classifier

机译:基于C5决策树分类器的异常入侵检测系统

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摘要

Due to increase in intrusion activities over internet, many intrusion detection systems are proposed to detect abnormal activities, but most of these detection systems suffer a common problem which is producing a high number of alerts and a huge number of false positives. As a result, normal activities could be classified as intrusion activities. This paper examines different data mining techniques that could minimize both the number of false negatives and false positives. C5 classifier's effectiveness is examined and compared with other classifiers. Results should that false negatives are reduced and intrusion detection has been improved significantly. A consequence of minimizing the false positives has resulted in reduction in the amount of the false alerts as well. In this study, multiple classifiers have been compared with C5 decision tree classifier using NSL-KDD dataset and results have shown that C5 has achieved high accuracy and low false alarms as an intrusion detection system.
机译:由于因特网上的入侵活动的增加,提出了许多入侵检测系统来检测异常活动,但是这些检测系统中的大多数遭受一个共同的问题,该问题会产生大量警报和大量误报。结果,正常活动可以分类为入侵活动。本文研究了可以最小化误报和误报数量的不同数据挖掘技术。检查C5分类器的有效性,并与其他分类器进行比较。应减少假阴性并显着改善入侵检测的结果。最小化误报的结果也导致了误报数量的减少。在这项研究中,使用NSL-KDD数据集将多个分类器与C5决策树分类器进行了比较,结果表明C5作为入侵检测系统已经实现了高精度和低误报。

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