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Comparative analysis of K-Means method and Na?ve Bayes method for brute force attack visualization

机译:K-METION方法与NAα贝斯法的比较分析蛮力攻击可视化

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This paper presents 2-Dimensional visualization to categorize packets of network traffic into normal data pattern and attack data pattern based on the patterns resulted by a brute force attack. Two clustering methods: K-Means and Nai?ve Bayes methods are used to produce the data to be visualized. Experiments using ISCX and DARPA dataset were conducted. Brute force assaults on some service protocols. This paper focuses on SSH service for ISCX dataset and TELNET service for DARPA dataset. Visual analysis of the experimental results show a better results in term of accuracy by reducing false alarms.
机译:本文介绍了二维可视化,以将网络流量分类为正常数据模式,并基于由蛮力攻击导致的模式进行攻击数据模式。两种聚类方法:K-Means和Nai贝雷斯方法用于产生要可视化的数据。进行了使用iSCX和DARPA数据集的实验。蛮力对某些服务协议进行攻击。本文重点介绍了用于DARPA数据集的ISCX数据集和Telnet服务的SSH服务。通过减少虚假警报,实验结果的视觉分析显示了精度的最佳结果。

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