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A Novel QUIC Traffic Classifier Based on Convolutional Neural Networks

机译:一种基于卷积神经网络的新型判断流量分类器

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Nowadays, network traffic classification plays an important role in many fields including network management, intrusion detection system, malware detection system, etc. Most of the previous research works concentrate on features extracted in the non-encrypted network traffic. However, these features are not compatible with all kind of traffic characterization. Google's QUIC protocol (Quick UDP Internet Connection protocol) is implemented in many services of Google. Nevertheless, the emergence of this protocol imposes many obstacles for traffic classification due to the reduction of visibility for operators into network traffic, so the port and payload- based traditional methods cannot be applied to identify the QUIC- based services. To address this issue, we proposed a novel technique for traffic classification based on the convolutional neural network which combines the feature extraction and classification phase into one system. The proposed method uses the flow and packet-based features to improve the performance. In comparison with current methods, the proposed method can detect some kind of QUIC-based services such as Google Hangout Chat, Google Hangout Voice Call, YouTube, File transfer and Google play music. Besides, the proposed method can achieve the microaveraging F1-score of 99.24 percent.
机译:如今,网络流量分类在许多领域中起重要作用,包括网络管理,入侵检测系统,恶意软件检测系统等。之前的大多数研究作品集中在非加密网络流量中提取的功能上。但是,这些功能与所有类型的流量表征不兼容。谷歌的Quic协议(快速UDP Internet连接协议)是在Google的许多服务中实现的。然而,由于运营商进入网络流量的可见性降低,该协议的出现对流量分类施加了许多障碍,因此不能应用端口和基于有效载荷的传统方法来识别基于QCIC的服务。为了解决这个问题,我们提出了一种基于卷积神经网络的流量分类技术,该技术将特征提取和分类阶段结合到一个系统中。该方法使用基于流和数据包的特征来提高性能。与目前的方法相比,所提出的方法可以检测某种基于Quic的服务,如Google Hoogout Chat,Google Hocout语音呼叫,YouTube,文件传输和Google播放音乐。此外,所提出的方法可以实现99.24%的微宽度F1分数。

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