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A Session-Packets-Based Encrypted Traffic Classification Using Capsule Neural Networks

机译:使用胶囊神经网络的基于会话数据包的加密流量分类

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摘要

With the enhancement of network security awareness and excellent applicability of encryption protocols, identifying encrypted traffic is a critical and fundamental task for many network protection applications. Conventional port-based and deep packet inspection (DPI) approaches can't classify encrypted traffic effectively. Recent studies show that the approaches based on machine learning especially deep learning are effective for the task. However, these studies ignore the feature attributes of traffic like the location of fixed strings and change the effective features behind the traffic. In this paper, we propose a novel session-packets-based encrypted network traffic classification model using capsule neural networks (CapsNet), called SPCaps. The SPCaps introduces a twice-segmentation mechanism to dilute the interference traffic and increase the weight of effective traffic. And then it learns the spatial characteristics of encrypted traffic using CapsNet and outputs the results of encrypted traffic classification by a softmax classifier. We evaluate the proposed model for encrypted traffic classification in terms of service and application on publicly available ISCX VPN-nonVPN dataset. The experimental results demonstrate that SPCaps outperforms the state-of-the-art encrypted traffic classification approaches.
机译:随着网络安全意识的增强和加密协议的出色适用性,识别加密流量对于许多网络保护应用程序来说都是至关重要的基本任务。传统的基于端口的深度包检查(DPI)方法无法有效地对加密流量进行分类。最近的研究表明,基于机器学习(尤其是深度学习)的方法对于该任务是有效的。但是,这些研究忽略了流量的特征属性(如固定字符串的位置),并更改了流量背后的有效特征。在本文中,我们提出了一种使用胶囊神经网络(CapsNet)的基于会话数据包的新型加密网络流量分类模型,称为SPCaps。 SPCaps引入了两次分段机制,以稀释干扰流量并增加有效流量的权重。然后,它使用CapsNet了解加密流量的空间特征,并通过softmax分类器输出加密流量分类的结果。我们根据在公共可用的ISCX VPN-nonVPN数据集上的服务和应用程序评估所提议的加密流量分类模型。实验结果表明,SPCaps优于最新的加密流量分类方法。

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