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Novel Geometric Area Analysis Technique for Anomaly Detection Using Trapezoidal Area Estimation on Large-Scale Networks

机译:大规模网络中梯形面积估计的异常检测新的几何区域分析技术

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The prevalence of interconnected appliances and ubiquitous computing face serious threats from the hostile activities of network attackers. Conventional Intrusion Detection Systems (IDSs) are incapable of detecting these intrusive events as their outcomes reflect high false positive rates (FPRs). In this paper, we present a novel Geometric Area Analysis (GAA) technique based on Trapezoidal Area Estimation (TAE) for each observation computed from the parameters of the Beta Mixture Model (BMM) for features and the distances between observations. As this GAA-based detection depends on the methodology of anomaly-based detection (ADS), it constructs the areas of normal observations in a normal profile with those of the testing set estimated from the same parameters to recognise abnormal patterns. We also design a scalable framework for handling large-scale networks, and our GAA technique considers a decision engine module in this framework. The performance of our GAA technique is evaluated using the NSL-KDD and UNSW-NB15 datasets. To reduce the high-dimensional data of network connections, we apply the Principal Component Analysis (PCA) and evaluate its influence on the GAA technique. The empirical results show that our technique achieves a higher detection rate and lower FPR with a lower processing time than other competing methods.
机译:互联电器的普遍率和普遍存在的计算面临着网络攻击者敌对活动的严重威胁。传统的入侵检测系统(IDS)不能检测这些侵入性事件,因为它们的结果反映了高误率(FPRS)。在本文中,我们介绍了一种基于梯形区域估计(TAE)的新型几何区域分析(GaA)技术,用于从β混合模型(BMM)的参数计算的每个观察的特征和观测之间的距离。由于基于GAA的检测取决于基于异常的检测(广告)的方法,它构成正常概况中的正常观察区域,与从相同参数估计的测试集的那些识别异常模式。我们还设计了一种可扩展的框架,用于处理大规模网络,我们的GAA技术在此框架中考虑决策引擎模块。使用NSL-KDD和UNSW-NB15数据集进行评估我们的GAA技术的性能。为了减少网络连接的高维数据,我们应用主成分分析(PCA)并评估其对GAA技术的影响。实证结果表明,我们的技术达到了比其他竞争方法更低的处理时间较高的检测率和更低的FPR。

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