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Improving Network Intrusion Detection with Growing Hierarchical Self-Organizing Maps

机译:通过增长的分层自组织映射改善网络入侵检测

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Nowadays, the growth of the computer networks and the expansion of the Internet have made the security to be a critical issue. In fact, many proposals for Intrusion Detection/Prevention Systems (IDS/IPS) have been proposed. These proposals try to avoid that corrupt or anomalous traffic reaches the user application or the operating system. Nevertheless, most of the IDS/IPS proposals only distinguish between normal traffic and anomalous traffic that can be suspected to be a potential attack. In this paper, we present a IDS/IPS approach based on Growing Hierarchical Self-Organizing Maps (GHSOM) which can not only differentiate between normal and anomalous traffic but also identify different known attacks. The proposed system has been trained and tested using the well-known DARPA/NSL-KDD datasets and the results obtained are promising since we can detect over 99,4% of the normal traffic and over 99,2 % of attacker traffic. Moreover, the system can be trained on-line by using the probability labeling method presented on this paper.
机译:如今,计算机网络的增长和Internet的扩展已使安全性成为一个关键问题。实际上,已经提出了许多有关入侵检测/防御系统(IDS / IPS)的建议。这些建议试图避免损坏或异常的流量到达用户应用程序或操作系统。但是,大多数IDS / IPS建议仅区分正常流量和异常流量,可以将其怀疑为潜在攻击。在本文中,我们提出了一种基于不断增长的分层自组织映射(GHSOM)的IDS / IPS方法,该方法不仅可以区分正常流量还是异常流量,还可以识别不同的已知攻击。所提出的系统已使用著名的DARPA / NSL-KDD数据集进行了培训和测试,获得的结果是有希望的,因为我们可以检测到99.4%的正常流量和99.2%的攻击者流量。此外,可以使用本文提出的概率标记方法对系统进行在线训练。

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