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Multivariate Correlation Analysis Technique Based on Euclidean Distance Map for Network Traffic Characterization

机译:基于欧几里德距离图的网络流量表征多变量相关分析技术

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The quality of feature has significant impact on the performance of detection techniques used for Denial-of-Service (DoS) attack. The features that fail to provide accurate characterization for network traffic records make the techniques suffer from low accuracy in detection. Although researches have been conducted and attempted to overcome this problem, there are some constraints in these works. In this paper, we propose a technique based on Euclidean Distance Map (EDM) for optimal feature extraction. The proposed technique runs analysis on original feature space (first-order statistics) and extracts the multivariate correlations between the first-order statistics. The extracted multivariate correlations, namely second-order statistics, preserve significant discriminative information for accurate characterizations of network traffic records, and these multivariate correlations can be the high-quality potential features for DoS attack detection. The effectiveness of the proposed technique is evaluated using KDD CUP 99 dataset and experimental analysis shows encouraging results.
机译:功能质量对用于拒绝服务(DOS)攻击的检测技术的性能产生重大影响。无法为网络流量记录提供准确表征的功能使得该技术在检测中遭受低精度。虽然已经进行了研究并试图克服这个问题,但这些作品中存在一些限制。在本文中,我们提出了一种基于欧几里德距离图(EDM)的技术,以获得最佳特征提取。所提出的技术对原始特征空间(一阶统计)进行分析,并提取一阶统计信息之间的多变量相关性。提取的多变量相关性,即二阶统计,保留了用于网络流量记录的准确表征的显着辨别信息,并且这些多变量相关性可以是DOS攻击检测的高质量潜在特征。使用KDD Cup 99数据集进行评估所提出的技术的有效性,实验分析显示令人鼓舞的结果。

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