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RePIDS: A multi tier Real-time Payload-based Intrusion Detection System

机译:RePIDS:基于多层实时有效负载的入侵检测系统

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摘要

Intrusion Detection System (IDS) deals with huge amount of network traffic and uses large feature set to discriminate normal pattern and intrusive pattern. However, most of existing systems lack the ability to process data for real-time anomaly detection. In this paper, we propose a 3-Tier Iterative Feature Selection Engine (IFSEng) for feature subspace selection. Principal Component Analysis (PCA) technique is used for the pre-processing of data. Mahalanobis Distance Map (MDM) is used to discover hidden correlations between the features and between the packets. We also propose a novel Real-time Payload-based Intrusion Detection System (RePIDS) that integrates a 3-Tier IFSEng and the MDM approach. Mahalanobis Distance (MD) dissimilarity criterion is used to classify each packet as either a normal or an attack packet. The effectiveness of the proposed RePIDS is evaluated using DARPA 99 dataset and Georgia Institute of Technology attack dataset. The traffic for Web-based application is considered for validating our model. F-value, a criterion, is used to evaluate the detection performance of RePIDS. Experimental results show that RePIDS achieves better performance (high F-values, 0.9958 for DARPA 99 dataset and 0.976 for Georgia Institute of Technology attack dataset respectively, with only 0.853! false alarm rate) and lower computational complexity when compared against two state-of-the-art payload-based intrusion detection systems. Additionally, it has 1.3 time higher throughput in comparison with real scenario of medium sized enterprise network.
机译:入侵检测系统(IDS)处理大量网络流量,并使用大型功能集来区分正常模式和入侵模式。但是,大多数现有系统都缺乏处理数据以进行实时异常检测的能力。在本文中,我们提出了一种用于特征子空间选择的3层迭代特征选择引擎(IFSEng)。主成分分析(PCA)技术用于数据的预处理。马氏距离图(MDM)用于发现特征之间以及数据包之间的隐藏关联。我们还提出了一种新颖的基于实时有效负载的入侵检测系统(RePIDS),该系统集成了3层IFSEng和MDM方法。马氏距离(MD)差异标准用于将每个数据包分类为正常数据包或攻击数据包。建议的RePIDS的有效性使用DARPA 99数据集和佐治亚理工学院攻击数据集进行评估。基于Web的应用程序的流量被认为可以验证我们的模型。 F值(一种标准)用于评估RePIDS的检测性能。实验结果表明,与两种状态相比,RePIDS具有更好的性能(高F值,DARPA 99数据集为0.9958,佐治亚理工学院攻击数据集为0.976,误报率仅为0.853!),并且计算复杂度较低。基于有效载荷的入侵检测系统。此外,与中型企业网络的实际情况相比,它具有1.3倍的吞吐量。

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