基于高效特征集的无监督异常检测引擎

Mohammad K. Houri Zarch, Masih Abedini, M. Berenjkoub, Amin Mirhosseini
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引用次数: 5

摘要

由于移动性、动态拓扑变化和缺乏任何基础设施,移动自组织网络(manet)存在一些安全问题。在manet中,检测异常和恶意行为非常重要。为了通过入侵检测系统检测出恶意攻击并对数据集进行分析,我们需要选择一些特征。因此,特征选择在检测各种攻击中起着至关重要的作用。在文献中,有几种选择这些特征的建议。通常,主成分分析(PCA)分析数据集和选定的特征。在本文中,我们收集了一些文献中最先进的作品的特征集。仿真结果表明,该特征集对异常行为的检测更为准确。此外,我们首次使用鲁棒PCA来分析数据集,而不是在MANET中使用PCA。通过鲁棒PCA,我们得到了一种无监督算法与PCA提供的半监督算法。与PCA相比,我们的结果表明鲁棒PCA不受网络中离群数据的影响。本文对正常状态和攻击状态进行了仿真,并对仿真结果进行了分析。
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An unsupervised anomaly detection engine with an efficient feature set for AODV
There are some security issues in Mobile Ad hoc Networks (MANETs) due to mobility, dynamic topology changes, and lack of any infrastructure. In MANETs, it is of great importance to detect anomaly and malicious behavior. In order to detect malicious attacks via intrusion detection systems and analyze the data set, we need to select some features. Hence, feature selection plays critical role in detecting various attacks. In the literature, there are several proposals to select such features. Usually, Principal Component Analysis (PCA) analyzes the data set and the selected features. In this paper, we have collected a feature set from some state-of-the-art works in the literature. Actually, our simulation shows this feature set detect anomaly behavior more accurate. In addition, for the first time, we use robust PCA for analyzing the data set instead of PCA in MANET. By means of robust PCA, we have an unsupervised algorithm versus semi-supervised provided by PCA. In contrast to PCA, our results show robust PCA cannot be affected by outlier data within the network. In this paper, normal and attack states are simulated and the results are analyzed.
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