Litcius/Paper detail

SAM

Guorui Xie, Qing Li, Yong Jiang, Tao Dai, Gengbiao Shen, Rui Li, Richard Sinnott, Shu‐Tao Xia

202031 citationsDOI

Abstract

Network traffic classification categorizes traffic classes based on protocols (e.g., HTTP or DNS) or applications (e.g., Facebook or Gmail). Its accuracy is a key foundation of some network management tasks like Quality-of-Service (QoS) control, anomaly detection, etc. To further improve the accuracy of traffic classification, recent researches have introduced deep learning based methods. However, most of them utilize the privacy-concerned payload (user data). Besides, they generally do not consider the dependency of bytes in a packet, which we believe can be exploited for the more accurate classification. In this work, we treat the initial bytes of a network packet as a language and propose a novel Self-Attention based Method (SAM) for traffic classification. The average F1-scores of SAM on protocol and application classification are 98.62% and 98.93%. With the higher accuracy of SAM, better QoS and anomaly detection can be met.

Topics & Concepts

Computer scienceTraffic classificationByteQuality of serviceNetwork packetPayload (computing)Computer networkProtocol (science)Anomaly detectionDeep packet inspectionKey (lock)Data miningArtificial intelligenceComputer securityPathologyOperating systemMedicineAlternative medicineInternet Traffic Analysis and Secure E-votingNetwork Security and Intrusion DetectionAdvanced Malware Detection Techniques
SAM | Litcius