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A data-driven metric learning-based scheme for unsupervised network anomaly detection

机译:基于数据驱动的无监督网络异常检测的基于度量学习方案

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Most network anomaly detection systems (NADSs) rely on the distance between the connections' feature vectors to identify attacks. Traditional distance metrics are inefficient for these systems as they deal with heterogeneous features of network connections. In this paper, we address a clustering-based NADS employing a data-driven distance metric. This metric is the outcome of a proposed metric learning method, which extracts its required side information from the training samples. The learned transformation matrix maps the connections' features to a new feature space in which similar and dissimilar connections are more well-separated while the local neighborhood information of the connections' features is preserved using the Laplacian Eigenmap technique. The proposed NADS is evaluated over the Kyoto 2006+ and NSL-KDD datasets. The experimental results show that it has superior performance in comparison with a recent SVM-clustering based NADS that employs the traditional Euclidean distance function. (C) 2018 Elsevier Ltd. All rights reserved.
机译:大多数网络异常检测系统(NADS)依赖于连接的特征向量之间的距离来识别攻击。传统的距离指标对于这些系统效率低,因此它们处理网络连接的异构特征。在本文中,我们解决了采用数据驱动距离度量的基于聚类的NAD。该度量是所提出的度量学习方法的结果,其从训练样本中提取其所需的侧信息。学习的转换矩阵将连接'功能映射到新的特征空间,其中类似于连接的当地邻域的局部邻域信息,在使用Laplacian Eigenmap技术的情况下保留相似和不相似的连接。所提出的NAD在京都2006+和NSL-KDD数据集上进行评估。实验结果表明,与最近的基于SVM聚类的NAD相比,它具有卓越的性能,该NAD采用传统的欧几里德距离功能。 (c)2018年elestvier有限公司保留所有权利。

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