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Fusion of Misuse Detection with Anomaly Detection Technique for Novel Hybrid Network Intrusion Detection System

机译:用异常检测技术融合滥用检测,新型混合网络入侵检测系统

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Intrusion detection system (IDS) was designed to monitor the abnormal activity occurring in the computer network system. Many researchers concentrate their efforts on designing different techniques to build reliable IDS. However, individual technique such as misuse and anomaly techniques alone failed to provide the best possible detection rate. In this paper, we proposed a new hybrid IDS model with feature selection that integrates misuse detection technique and anomaly detection technique based on a decision rule structure. The key idea was to take the advantage of na?ve Bayes (NB) feature selection, misuse detection technique based on decision tree (DT), and anomaly detection based on one-class support vector machine (OCSVM). First, misuse detection is built using single DT algorithm where the training data get decomposed into multiple subsets with the help of decision rules. Then, anomaly detection models are created for each decomposed subset based on multiple OCSVM. In the proposed model, NB and DT can find the best-selected features to ameliorate the detection accuracy by obtaining decision rules for known normal and attack anomalies. Then, the OCSVM can detect new attacks that result in an improvement in the detection accuracy of classification. The proposed new hybrid model was evaluated based on the NSL-KDD data sets, which is an upgraded version of KDD99 data set developed by DARPA. Simulation results demonstrate that the proposed hybrid model outperforms conventional models in terms of time complexity and detection rate with the much lower rate of false positives.
机译:入侵检测系统(IDS)旨在监测计算机网络系统中发生的异常活动。许多研究人员专注于设计不同技术以建立可靠的ID。然而,单独的单独技术,例如误用和异常技术未能提供最佳的检测率。在本文中,我们提出了一种新的混合ID模型,具有特征选择,其基于决策规则结构集成了滥用检测技术和异常检测技术。关键的想法是利用基于决策树(DT)的Na ve Bayes(NB)特征选择,滥用检测技术,以及基于单级支持向量机(OCSVM)的异常检测。首先,使用单个DT算法建立误用检测,其中培训数据在决策规则的帮助下将培训数据分解为多个子集。然后,基于多个OCSVM为每个分解子集创建异常检测模型。在所提出的模型中,Nb和DT可以通过获取已知正常和攻击异常的决策规则来找到最佳选择的功能来改善检测精度。然后,OCSVM可以检测到导致分类检测准确性的改进的新攻击。基于NSL-KDD数据集评估所提出的新混合模型,该数据集是由DARPA开发的升级版的KDD99数据集。仿真结果表明,所提出的混合模型在时间复杂性和检测率方面优于常规模型,具有较低的误报率。

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