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Network traffic classification based on Kernel Self-Organizing Maps

机译:基于核自组织图的网络流量分类

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Network traffic classification has always been an important part of realizing effective network management. Due to network traffic is high-dimensional nonlinear, classical Self-Organizing Maps (SOM) has poor robustness and reliability because it adopts Euclidean distance. A network traffic classification method based on Kernel-SOM (KSOM) is proposed, which replaces Euclidean distance with non-Euclidean distance induced by kernel function, and adopts it to estimate the matching degree between the input pattern and the connection weight. Experimental results demonstrate that compared with the classical SOM and NB, KSOM achieves higher classification presicion, and has shown fascinating characteristic when being used in the classification of network traffic.
机译:网络流量分类一直是实现有效网络管理的重要组成部分。由于网络流量是高维非线性的,因此经典的自组织映射(SOM)由于采用了欧几里得距离而具有较差的鲁棒性和可靠性。提出了一种基于核-SOM(KSOM)的网络流量分类方法,该方法用核函数引起的非欧几里得距离代替欧几里得距离,并用来估计输入模式与连接权重之间的匹配度。实验结果表明,与传统的SOM和NB相比,KSOM具有更高的分类精度,并且在用于网络流量分类时表现出令人着迷的特征。

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