Salvato in:
Dettagli Bibliografici
Autori principali: Qin, Tian, Cheng, Guang, Zhou, Yuyang, Chen, Zihan, Luan, Xing
Natura: Preprint
Pubblicazione: 2025
Soggetti:
Accesso online:https://arxiv.org/abs/2503.13808
Tags: Aggiungi Tag
Nessun Tag, puoi essere il primo ad aggiungerne!!
_version_ 1866915203004760064
author Qin, Tian
Cheng, Guang
Zhou, Yuyang
Chen, Zihan
Luan, Xing
author_facet Qin, Tian
Cheng, Guang
Zhou, Yuyang
Chen, Zihan
Luan, Xing
contents The rapid advancement of internet technology has led to a surge in data transmission, making network traffic classification crucial for security and management. However, there are significant deficiencies in its efficiency for handling multiattribute analysis and its ability to expand model knowledge, making it difficult to adapt to the ever-changing network environment and complex identification requirements. To address this issue, we proposed the SNAKE (Sustainable Network Analysis with Knowledge Exploration) system, which adopts a multi-gated mixture of experts architecture to construct a multi-functional traffic classification model. The system analyzes traffic attributes at different levels through multiple expert sub-models, providing predictions for these attributes via gating and a final Tower network. Additionally, through an intelligent gating configuration, the system enables extremely fast model integration and evolution across various knowledge expansion scenarios. Its excellent compatibility allows it to continuously evolve into a multi-functional largescale model in the field of traffic analysis. Our experimental results demonstrate that the SNAKE system exhibits remarkable scalability when faced with incremental challenges in diverse traffic classification tasks. Currently, we have integrated multiple models into the system, enabling it to classify a wide range of attributes, such as encapsulation usage, application types and numerous malicious behaviors. We believe that SNAKE can pioneeringly create a sustainable and multifunctional large-scale model in the field of network traffic analysis after continuous expansion.
format Preprint
id arxiv_https___arxiv_org_abs_2503_13808
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SNAKE: A Sustainable and Multi-functional Traffic Analysis System utilizing Specialized Large-Scale Models with a Mixture of Experts Architecture
Qin, Tian
Cheng, Guang
Zhou, Yuyang
Chen, Zihan
Luan, Xing
Networking and Internet Architecture
The rapid advancement of internet technology has led to a surge in data transmission, making network traffic classification crucial for security and management. However, there are significant deficiencies in its efficiency for handling multiattribute analysis and its ability to expand model knowledge, making it difficult to adapt to the ever-changing network environment and complex identification requirements. To address this issue, we proposed the SNAKE (Sustainable Network Analysis with Knowledge Exploration) system, which adopts a multi-gated mixture of experts architecture to construct a multi-functional traffic classification model. The system analyzes traffic attributes at different levels through multiple expert sub-models, providing predictions for these attributes via gating and a final Tower network. Additionally, through an intelligent gating configuration, the system enables extremely fast model integration and evolution across various knowledge expansion scenarios. Its excellent compatibility allows it to continuously evolve into a multi-functional largescale model in the field of traffic analysis. Our experimental results demonstrate that the SNAKE system exhibits remarkable scalability when faced with incremental challenges in diverse traffic classification tasks. Currently, we have integrated multiple models into the system, enabling it to classify a wide range of attributes, such as encapsulation usage, application types and numerous malicious behaviors. We believe that SNAKE can pioneeringly create a sustainable and multifunctional large-scale model in the field of network traffic analysis after continuous expansion.
title SNAKE: A Sustainable and Multi-functional Traffic Analysis System utilizing Specialized Large-Scale Models with a Mixture of Experts Architecture
topic Networking and Internet Architecture
url https://arxiv.org/abs/2503.13808