基于增长分层SOM的网络流量异常检测

Shin-Ying Huang, Yennun Huang
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引用次数: 35

摘要

网络异常检测的目的是检测给定网络流量数据中不符合既定正常行为的模式。从大量数据中区分不同的异常模式可能是一项挑战,更不用说从比较的角度对它们进行可视化了。近年来,K-means[3]、自组织映射(SOM)[2]和增长层次自组织映射(GHSOM)[1]等无监督学习方法已被证明能够促进网络异常检测[4][5]。然而,目前还没有同时解决挖掘和探测任务的研究。本研究利用GHSOM的优势,分析网络流量数据,可视化具有层次关系的攻击模式分布。在挖掘阶段,每个模式及其描述信息之间的几何距离在拓扑空间中显示出来。每个节点的密度和样本大小可以帮助检测异常网络流量。在检测阶段,本研究扩展了传统的GHSOM,使用支持向量机(SVM)[6]将网络流量数据分类到预定义的类别中。该方法实现了(1)有助于理解异常网络流量数据的行为(2)提供有效的分类规则,便于网络异常检测;(3)积累网络异常检测知识,便于挖掘和检测。使用公共数据集和私有数据集来评估所提出的方法。预期的结果是证实了所提出的方法可以帮助理解网络流量数据,并且检测机制对于识别异常行为是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Network traffic anomaly detection based on growing hierarchical SOM
Network anomaly detection aims to detect patterns in a given network traffic data that do not conform to an established normal behavior. Distinguishing different anomaly patterns from large amount of data can be a challenge, let alone visualizing them in a comparative perspective. Recently, the unsupervised learning method such as the K-means [3], self-organizing map (SOM) [2], and growing hierarchical self-organizing map (GHSOM) [1] have been shown to be able to facilitate network anomaly detection [4][5]. However, there is no study addressing both mining and detecting task. This study leverages the advantage of GHSOM to analyze the network traffic data and visualize the distribution of attack patterns with hierarchical relationship. In the mining stage, the geometric distances between each pattern and its descriptive information are revealed in the topological space. The density and the sample size of each node can help to detect anomalous network traffic. In the detecting stage, this study extends the traditional GHSOM and uses the support vector machine (SVM) [6] to classify network traffic data into the predefined categories. The proposed approach achieves (1) help understand the behaviors of anomalous network traffic data (2) provide effective classification rule to facilitate network anomaly detection and (3) accumulate network anomaly detection knowledge for both mining and detecting purpose. The public dataset and the private dataset are used to evaluate the proposed approach. The expected result is to confirm that the proposed approach can help understand network traffic data, and the detecting mechanism is effective for identifying anomalous behavior.
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