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A New Network Anomaly Detection Method Based on Header Information Using Greedy Algorithm

机译:一种基于标题信息的贪婪算法的网络异常检测新方法

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Network anomaly detection is an important and rapidly growing area. In this paper, we propose a new network anomaly detection method based on the probability distributions of header information. The distances between the distributions of packet headers are calculated to reflect the main characteristics of the network. These are calculated using the Greedy algorithm which eliminates some requirements associated with Kullback-Leibler divergence such as having the same rank of the probability distributions. Then, Support Vector Machine classifier is used in the detection phase to reduce false alarm rates and to make the system adaptive for different networks. This algorithm is tested on the real data collected from Boğaziçi University network and MIT Darpa 2000 dataset.
机译:网络异常检测是一个重要且迅速发展的领域。本文提出了一种基于标头信息概率分布的网络异常检测新方法。计算分组报头的分布之间的距离以反映网络的主要特征。这些是使用Greedy算法计算的,该算法消除了一些与Kullback-Leibler散度相关的要求,例如具有相同等级的概率分布。然后,在检测阶段使用支持向量机分类器以减少误报率并使系统适应于不同的网络。该算法在从Boğaziçi大学网络和MIT Darpa 2000数据集收集的真实数据上进行了测试。

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