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Graph analysis of network flow connectivity behaviors

机译:网络流连接行为的图形分析

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Graph-based approaches have been widely employed to facilitate in analyzing network flow connectivity behaviors, which aim to understand the impacts and patterns of network events. However, existing approaches suffer from lack of connectivity-behavior information and loss of network event identification. In this paper, we propose network flow connectivity graphs (NFCGs) to capture network flow behavior for modeling social behaviors from network entities. Given a set of flows, edges of a NFCG are generated by connecting pairwise hosts who communicate with each other. To preserve more information about network flows, we also embed node-ranking values and edge-weight vectors into the original NFCG. After that, a network flow connectivity behavior analysis framework is present based on NFCGs. The proposed framework consists of three modules: a graph simplification module based on diversified filtering rules, a graph feature analysis module based on quantitative or semiquantitative analysis, and a graph structure analysis module based on several graph mining methods. Furthermore, we evaluate our NFCG-based framework by using real network traffic data. The results show that NFCGs and the proposed framework can not only achieve good performance on network behavior analysis but also exhibit excellent scalability for further algorithmic implementations.
机译:基于图的方法已被广泛采用以方便分析网络流连接行为,目的是了解网络事件的影响和模式。但是,现有方法遭受缺乏连通性信息和网络事件识别的损失。在本文中,我们提出了网络流量连通性图(NFCG)来捕获网络流量行为,以对来自网络实体的社会行为进行建模。给定一组流,通过连接相互通信的成对主机来生成NFCG的边缘。为了保留有关网络流的更多信息,我们还将节点排名值和边缘权重矢量嵌入到原始NFCG中。之后,提出了基于NFCG的网络流连接行为分析框架。所提出的框架包括三个模块:基于多样化过滤规则的图形简化模块,基于定量或半定量分析的图形特征分析模块以及基于多种图形挖掘方法的图形结构分析模块。此外,我们通过使用真实的网络流量数据来评估基于NFCG的框架。结果表明,NFCG和提出的框架不仅可以在网络行为分析上获得良好的性能,而且还具有出色的可扩展性,可用于进一步的算法实现。

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