Time-Distributed Feature Learning for Internet of Things Network Traffic Classification
Yoga Suhas Kuruba Manjunath, Sihao Zhao, Xiao-Ping Zhang, Lian Zhao

TL;DR
This paper introduces a novel time-distributed feature learning method for IoT network traffic classification that captures holistic temporal features, significantly improving accuracy over existing techniques.
Contribution
The paper proposes an efficient deep learning approach using time-distributed wrappers to extract pseudo-temporal and spatio-temporal features for IoT traffic classification.
Findings
Achieves 13.5% higher accuracy than state-of-the-art methods
Effectively captures holistic temporal features within packets and flows
Enhances robustness and performance of network traffic classifiers
Abstract
Deep learning-based network traffic classification (NTC) techniques, including conventional and class-of-service (CoS) classifiers, are a popular tool that aids in the quality of service (QoS) and radio resource management for the Internet of Things (IoT) network. Holistic temporal features consist of inter-, intra-, and pseudo-temporal features within packets, between packets, and among flows, providing the maximum information on network services without depending on defined classes in a problem. Conventional spatio-temporal features in the current solutions extract only space and time information between packets and flows, ignoring the information within packets and flow for IoT traffic. Therefore, we propose a new, efficient, holistic feature extraction method for deep-learning-based NTC using time-distributed feature learning to maximize the accuracy of the NTC. We apply a…
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Taxonomy
Methodstravel james
