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Network Anomaly Detection Based on DSOM and ACO Clustering

机译:基于DSOM和ACO聚类的网络异常检测。

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摘要

An approach to network anomaly detection is investigated, based on dynamic self-organizing maps (DSOM) and ant colony optimization (ACO) clustering. The basic idea of the method is to produce the cluster by DSOM and ACO. With the classified data instances, anomaly data clusters can be easily identified by normal cluster ratio. And then the identified cluster can be used in real data detection. In the traditional clustering-based intrusion detection algorithms, clustering using a simple distance-based metric and detection based on the centers of clusters, which generally degrade detection accuracy and efficiency. Our approach based on DSOM and ACO clustering can settle these problems effectively. The experiment results show that our approach can detect unknown intrusions efficiently in the real network connections.
机译:研究了一种基于动态自组织图(DSOM)和蚁群优化(ACO)聚类的网络异常检测方法。该方法的基本思想是通过DSOM和ACO生产群集。使用分类的数据实例,可以通过正常聚类比率轻松识别异常数据聚类。然后,可以将识别出的群集用于实际数据检测。在传统的基于聚类的入侵检测算法中,使用简单的基于距离的度量进行聚类并基于聚类中心进行检测,这通常会降低检测的准确性和效率。我们基于DSOM和ACO群集的方法可以有效解决这些问题。实验结果表明,我们的方法可以有效地检测实际网络连接中的未知入侵。

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