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Impact of Feature Reduction on the Efficiency of Wireless Intrusion Detection Systems

机译:特征缩减对无线入侵检测系统效率的影响

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Intrusion Detection Systems (IDSs) are a major line of defense for protecting network resources from illegal penetrations. A common approach in intrusion detection models, specifically in anomaly detection models, is to use classifiers as detectors. Selecting the best set of features is central to ensuring the performance, speed of learning, accuracy, and reliability of these detectors as well as to remove noise from the set of features used to construct the classifiers. In most current systems, the features used for training and testing the intrusion detection systems consist of basic information related to the TCP/IP header, with no considerable attention to the features associated with lower level protocol frames. The resulting detectors were efficient and accurate in detecting network attacks at the network and transport layers, but unfortunately, not capable of detecting 802.11-specific attacks such as deauthentication attacks or MAC layer DoS attacks. In this paper, we propose a novel hybrid model that efficiently selects the optimal set of features in order to detect 802.11-specific intrusions. Our model for feature selection uses the information gain ratio measure as a means to compute the relevance of each feature and the k-means classifier to select the optimal set of MAC layer features that can improve the accuracy of intrusion detection systems while reducing the learning time of their learning algorithm. In the experimental section of this paper, we study the impact of the optimization of the feature set for wireless intrusion detection systems on the performance and learning time of different types of classifiers based on neural networks. Experimental results with three types of neural network architectures clearly show that the optimization of a wireless feature set has a significant impact on the efficiency and accuracy of the intrusion detection system.
机译:入侵检测系统(IDS)是保护网络资源免遭非法渗透的主要防线。入侵检测模型(特别是异常检测模型)中的一种常见方法是使用分类器作为检测器。选择最佳的功能集是确保这些检测器的性能,学习速度,准确性和可靠性,以及从用于构造分类器的功能集中消除噪声的关键。在大多数当前系统中,用于训练和测试入侵检测系统的功能由与TCP / IP标头相关的基本信息组成,而对与较低级别协议帧相关的功能的关注却很少。生成的检测器在检测网络和传输层的网络攻击时是高效且准确的,但是不幸的是,它无法检测到802.11特定的攻击,例如取消身份验证攻击或MAC层DoS攻击。在本文中,我们提出了一种新颖的混合模型,该模型可以有效地选择最佳功能集,以检测802.11特定的入侵。我们的特征选择模型使用信息增益比率度量作为计算每个特征的相关性的手段,并使用k均值分类器选择最佳的MAC层特征集,从而可以提高入侵检测系统的准确性,同时减少学习时间他们的学习算法。在本文的实验部分,我们研究基于无线网络的无线入侵检测系统的特征集优化对不同类型分类器的性能和学习时间的影响。三种类型的神经网络体系结构的实验结果清楚地表明,无线功能集的优化对入侵检测系统的效率和准确性有重大影响。

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