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Direct Batch Growth Hierarchical Self-Organizing Mapping Based on Statistics for Efficient Network Intrusion Detection

机译:基于高效网络入侵检测统计的直接批量增长分层自组织映射

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摘要

A new evaluation mechanism was proposed to enhance the representation of data topology in the directed batch growth hierarchical self-organizing mapping. In the proposed mechanism, the growth threshold and the correlation worked in a case-sensitive manner through the statistic calculation of the input data. Since the proposed model enabled a more thorough representation of data topology from both the horizontal and the vertical directions, it naturally held great potential in detecting various traffic attacks. Numerical experiments of network intrusion detection were carried out on the datasets of KDD99, Moore and CICIDS2017, where the good performance validated the superiority of the proposed method.
机译:提出了一种新的评估机制,以增强指示批量生产分层自组织映射中数据拓扑的代表性。在所提出的机制中,通过输入数据的统计计算,生长阈值和相关性以区分敏感的方式工作。由于所提出的模型能够从水平和垂直方向上更全面地表示数据拓扑,因此它自然地潜在地检测各种交通攻击。网络入侵检测的数值实验在KDD99,Moore和Cicids2017的数据集上进行,其中良好的性能验证了所提出的方法的优越性。

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