Shaker El-Sappagh, A. Mohammed, Tarek Ahmed AlSheshtawy
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引用次数: 7
摘要
在网络安全框架中,入侵检测是一个基准部分,是保护PC机免受多线程攻击的基本手段。入侵检测中的一个大问题是大量的假警报;这个问题促使一些专家根据数据挖掘发现最小化错误警报的解决方案,这是在大数据(例如KDD CUP 99)中使用的分析过程中的一个考虑因素。本文对入侵检测中处理虚假警报的各种数据挖掘分类进行了综述。在KDD CUP 99上对多个数据挖掘过程进行了测试,结果表明,该过程不是单个过程,可以揭示所有的攻击类别,具有较高的准确率和无误报的特点。多层感知器的最佳准确率为92%;然而,基于规则的模型的最佳训练时间是4秒。结论是,应对多种网络攻击应采用不同的程序。
CLASSIFICATION PROCEDURES FOR INTRUSION DETECTION BASED ON KDD CUP 99 DATA SET
In network security framework, intrusion detection is one of a benchmark part and is a fundamental way to protect PC from many threads. The huge issue in intrusion detection is presented as a huge number of false alerts; this issue motivates several experts to discover the solution for minifying false alerts according to data mining that is a consideration as analysis procedure utilized in a large data e.g. KDD CUP 99. This paper presented various data mining classification for handling false alerts in intrusion detection as reviewed. According to the result of testing many procedure of data mining on KDD CUP 99 that is no individual procedure can reveal all attack class, with high accuracy and without false alerts. The best accuracy in Multilayer Perceptron is 92%; however, the best Training Time in Rule based model is 4 seconds . It is concluded that ,various procedures should be utilized to handle several of network attacks.