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An intelligent approach for Intrusion Detection based on data mining techniques

机译:基于数据挖掘技术的智能入侵检测方法

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Intrusion Detection system is an active and driving secure technology. Intrusion detection (ID) is the process of examining the events occurring in a computer system or network. Analyzing the system or network for signs of intrusions, defined as attempts to compromise the confidentiality, integrity, availability, or to bypass the security mechanisms of a network. The focus of this paper is mainly on intrusion detection based on data mining. The main part of Intrusion Detection Systems (IDSs) is to produce huge volumes of alarms. The interesting alarms are always mixed with unwanted, non-interesting and duplicate alarms. The aim of data mining is to improve the detection rate and decrease the false alarm rate. So, here we proposed a framework which detect the intrusion and after that, it will show the improvement of k-means clustering algorithm.
机译:入侵检测系统是一种主动的且驱动安全的技术。入侵检测(ID)是检查计算机系统或网络中发生的事件的过程。分析系统或网络是否存在入侵迹象,定义为试图破坏机密性,完整性,可用性或绕过网络的安全机制。本文的重点主要是基于数据挖掘的入侵检测。入侵检测系统(IDS)的主要部分是产生大量警报。有趣的警报总是与不需要的,无趣的和重复的警报混合在一起。数据挖掘的目的是提高检测率并降低误报率。因此,在这里我们提出了一个检测入侵的框架,之后,它将展示k-means聚类算法的改进。

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