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CorrCorr: A feature selection method for multivariate correlation network anomaly detection techniques

机译:CorrCorr:多元相关网络异常检测技术的特征选择方法

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摘要

Recent research on network intrusion detection has focused on correlation-based techniques, which allow one to adapt to continuously changing environments such as the Internet of Things. Despite it being common practice for network intrusion detection to utilise feature selection techniques to enhance performance, correlation-based techniques have rarely been applied to them. This is mainly due the fact that traditional feature selection methods are not tailored to multivariate correlation techniques and new methods are required. To address this gap, we are introducing CorrCorr, a feature selection method for multivariate correlation-based network anomaly detection systems. Evaluated on the UNSW-NB15 and NSL-KDD intrusion detection dataset, CorrCorr consistently outperformed the original features as well as features selected with a Principal Component Analysis (PCA) and a Pearson class label correlation. We also analysed the UNSW-NB15 dataset on feature correlations and have identified several weaknesses.
机译:关于网络入侵检测的最新研究集中在基于相关性的技术上,该技术允许人们适应不断变化的环境,例如物联网。尽管网络入侵检测通常使用特征选择技术来增强性能,但是基于相关性的技术却很少应用于它们。这主要是由于以下事实:传统的特征选择方法并未针对多变量相关技术进行调整,而需要新的方法。为了解决这一差距,我们正在引入CorrCorr,这是用于基于多元相关的网络异常检测系统的特征选择方法。在UNSW-NB15和NSL-KDD入侵检测数据集上进行评估后,CorrCorr始终优于原始特征以及通过主成分分析(PCA)和Pearson类标签相关性选择的特征。我们还分析了UNSW-NB15数据集的特征相关性,并确定了一些弱点。

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