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Network Anomaly Detection Using Unsupervised Feature Selection and Density Peak Clustering

机译:使用无监督特征选择和密度峰值聚类的网络异常检测

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Intrusion detection systems (IDSs) play a significant role to effectively defend our crucial computer systems or networks against attackers on the Internet. Anomaly detection is an effective way to detect intrusion, which can discover patterns that do not conform to expected behavior. The mainstream approaches of ADS (anomaly detection system) are using data mining technology to automatically extract normal pattern and abnormal ones from a large set of network data and distinguish them from each other. However, supervised or semi-supervised approaches in data mining rely on data label information. This is not practical when the network data is large-scale. In this paper, we propose a two-stage approach, unsupervised feature selection and density peak clustering to tackle label lacking situations. First, the density-peak based clustering approach is introduced for network anomaly detection, which considers both distance and density nature of data. Second, to achieve better performance of clustering process, we use maximal information coefficient and feature clustering to remove redundant and irrelevant features. Experimental results show that our method can get rid of useless features of high-dimensional data and achieves high detection accuracy and efficiency in the meanwhile.
机译:入侵检测系统(IDS)在有效防御互联网上的攻击者的重要计算机系统或网络方面发挥着重要作用。异常检测是检测入侵的有效方法,可以发现与预期行为不符的模式。 ADS(异常检测系统)的主流方法是使用数据挖掘技术从大量网络数据中自动提取正常模式和异常模式,并将它们彼此区分开。但是,数据挖掘中的监督或半监督方法依赖于数据标签信息。当网络数据规模较大时,这是不切实际的。在本文中,我们提出了一种两阶段方法,即无监督特征选择和密度峰聚类,以解决标签缺失的情况。首先,引入了基于密度峰的聚类方法进行网络异常检测,该方法考虑了数据的距离和密度性质。其次,为了获得更好的聚类过程性能,我们使用最大信息系数和特征聚类来去除多余和不相关的特征。实验结果表明,该方法可以消除高维数据的无用特征,并能达到较高的检测精度和效率。

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