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An Efficient Network Intension Detection Method Based on Information Theory and Genetic Algorithm

机译:一种基于信息理论和遗传算法的高效网络内涵检测方法

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The Internet has been growing at an amazing rate and concurrent with the growth, the vulnerability of the Internet is also increasing. Though the Internet has been designed to withstand various forms of failure, the intrusion tools and attacks are becoming increasingly sophisticated, exposing the Internet to new threats. To make networked systems reliable and robust it becomes highly essential to develop on-line monitoring, analysis, and quantification of the behavior of networks under a wide range of attacks and to recover from these attacks. In this paper, we present a hybrid method based on information theory and genetic algorithm to detect network attacks. Our approach uses information theory to filter the traffic data and thus reduce the complexity. We use a linear structure rule to classify the network behaviors into normal and abnormal behaviors. We apply our approach to the kdd99 benchmark dataset and obtain high detection rate of 99.25% as well as low false alarm rate of 1.66%.
机译:互联网以惊人的速度增长并同时发展,互联网的脆弱性也在增加。虽然互联网旨在承受各种形式的故障,但入侵工具和攻击越来越复杂,将互联网暴露于新的威胁。为了使网络系统可靠和强大,在广泛的攻击下开发网络行为的在线监测,分析和量化,并从这些攻击中恢复,这变得非常重要。本文介绍了一种基于信息理论和遗传算法的混合方法来检测网络攻击。我们的方法使用信息理论来过滤流量数据,从而降低复杂性。我们使用线性结构规则将网络行为对正常和异常行为进行分类。我们将我们的方法应用于KDD99基准数据集,获得高检测率为99.25%,而低误报率为1.66%。

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