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Network Intrusion Detection Using Flow Statistics

机译:使用流统计信息进行网络入侵检测

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The increasing use of network data within every aspect of human life, ranging from genetic databases to credit card payments, urges for efficient methods for detecting any attempts (intrusions) to compromise sensitive information. The problem of detecting such network intrusions is challenging, since the regular or normal network patterns are permanently changing. This paper discusses a novel intrusion detection system based on using histograms of network parameters as features which are then fed into an extreme learning machine for classifying network flows. We evaluate and compare the proposed method with existing approaches using the ISCX-IDS 2012 benchmark dataset. The numerical experiments indicate that the proposed method outperforms existing approaches by achieving an average detection rate of up to 99% while suffering a misclassification rate of only 2 %.
机译:从遗传数据库到信用卡付款,人们在生活的方方面面都越来越多地使用网络数据,因此迫切需要一种有效的方法来检测对敏感信息的任何企图(入侵)。由于常规或常规网络模式会永久更改,因此检测此类网络入侵的问题具有挑战性。本文讨论了一种新颖的入侵检测系统,它基于网络参数的直方图作为特征,然后将其输入到用于对网络流进行分类的极限学习机中。我们使用ISCX-IDS 2012基准数据集评估该提议的方法与现有方法。数值实验表明,所提出的方法在达到平均检出率高达99%的同时,错误分类率仅为2%的情况下,优于现有方法。

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