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FENet: Roles Classification of IP Addresses Using Connection Patterns

机译:FENet:使用连接模式的IP地址的角色分类

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It is valuable to classify IP address roles based on network traffic behavior for network security analysis. Many previous studies have focused on coarse-grained classification (e.g., servers, clients and P2P, and so on.), these do not meet the increasingly diverse needs of applications. In this paper, we propose a novel approach for learning the continuous feature representation of connection patterns that we call FENet, which focuses on the low-dimensional embedding of IP address connection features. Thus, we trained two-tier neural networks that classified IP address roles in the given network dataset. Our approach can achieve more fine granularity representation and classification of IP address roles. Experimental results demonstrate the effectiveness of FENet over existing state-of-the-art techniques. In several real-world networks from active IP addresses, we have achieved very high classification accuracy and stability.
机译:根据网络流量行为对IP地址角色进行分类对于网络安全分析非常有价值。先前的许多研究都集中在粗粒度分类(例如服务器,客户端和P2P等)上,这些不能满足应用程序日益多样化的需求。在本文中,我们提出了一种新颖的方法来学习连接模式的连续特征表示(我们称为FENet),该方法着重于IP地址连接特征的低维嵌入。因此,我们训练了两层神经网络,该网络对给定网络数据集中的IP地址角色进行了分类。我们的方法可以实现更精细的IP地址角色表示和分类。实验结果表明,FENet优于现有的最新技术。在来自活动IP地址的多个实际网络中,我们已经实现了非常高的分类准确性和稳定性。

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