首页> 外文期刊>Journal of Theoretical and Applied Information Technology >HYBRID JAMES-STEIN AND SUCCESSIVE DIFFERENCE COVARIANCE MATRIX ESTIMATORS BASED HOTELLING?S T2 CHART FOR NETWORK ANOMALY DETECTION USING BOOTSTRAP
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HYBRID JAMES-STEIN AND SUCCESSIVE DIFFERENCE COVARIANCE MATRIX ESTIMATORS BASED HOTELLING?S T2 CHART FOR NETWORK ANOMALY DETECTION USING BOOTSTRAP

机译:基于HOTELLING的Hybrid James-Stein和连续差分协方差估计的T2图,用于通过自举法进行网络异常检测

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Statistical process control (SPC) is one of the powerful statistical methods that continuously improves the manufacturing process. The advantage of using the method in network anomaly detection is the technique does not need the knowledge of an information from the previous intrusions. The Hotelling's T2 is the mostly used control chart for network intrusion detection. However, Hotelling's T2 chart, which uses the conventional mean and covariance matrix, is sensitive to the outlier presence. Therefore, the conventional method is not effective to be implemented in Intrusion Detection System. To overcome this problem, Successive Difference Covariance Matrix (SDCM), which is one of the robust covariance matrix estimators, can be implemented in estimating the covariance matrix. Meanwhile, the James-Stein estimator can be adopted in estimating the mean vector of the Hotelling?s T2 control chart. The utilization of the bootstrap resampling method is intended to obtain the more accurate control limit of the proposed chart. The combination of these estimators with the bootstrap resampling approach demonstrates the better performance when it is used to monitor the anomaly in the network than the other control limit approaches in training and testing dataset. In addition, the IDS based on the proposed chart has better performance than the other existing charts based on its hit rate and FN rate criteria. The proposed method also outperforms some classifier methods.
机译:统计过程控制(SPC)是不断改进制造过程的强大统计方法之一。在网络异常检测中使用该方法的优点是该技术不需要了解来自先前入侵的信息。 Hotelling的T2是用于网络入侵检测的最常用的控制图。但是,使用传统的均值和协方差矩阵的Hotelling的T2图对异常值存在敏感。因此,传统方法不能有效地在入侵检测系统中实施。为了克服这个问题,可以在估计协方差矩阵时实施作为鲁棒协方差矩阵估计器之一的连续差分协方差矩阵(SDCM)。同时,可以采用James-Stein估计量来估计Hotelling T2控制图的均值向量。自举重采样方法的使用旨在获得所建议图表的更精确控制极限。与在训练和测试数据集中的其他控制限制方法相比,将这些估计器与自举重采样方法结合使用可证明在监视网络中异常时具有更好的性能。此外,基于命中率和FN率标准的基于建议图表的IDS比其他现有图表具有更好的性能。所提出的方法也优于某些分类器方法。

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