MULTI-LAYER CLASSIFIER FOR MINIMIZING FALSE INTRUSION

Shaker El-Sappagh, El-Sappagh Mohammed, Tarek Ahmed AlSheshtawy
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引用次数: 1

Abstract

Intrusion detection is one of the standard stages to protect computers in network security framework from several attacks. False alarms problem is critical in intrusion detection, which motivates many researchers to discover methods to minify false alarms. This paper proposes a procedure for classifying the type of intrusion according to multi-operations and multi-layer classifier for handling false alarms in intrusion detection. The proposed system is tested using on KDDcup99 benchmark. The performance showed that results obtained from three consequent classifiers are better than a single classifier. The accuracy reached 98% based on 25 features instead of using all features of KDDCup99 dataset.
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最小化虚假入侵的多层分类器
入侵检测是保护网络安全框架中的计算机免受各种攻击的标准步骤之一。虚警问题是入侵检测中的一个关键问题,它激发了许多研究者寻找最小化虚警的方法。本文提出了一种基于多操作的入侵类型分类方法和多层分类器处理入侵检测中的虚警。在KDDcup99基准测试上对系统进行了测试。结果表明,三个结果分类器的分类效果优于单个分类器。与使用KDDCup99数据集的所有特征相比,基于25个特征的准确率达到98%。
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