Time-Distributed Feature Learning for Internet of Things Network Traffic Classification

IF 4.7 2区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS IEEE Transactions on Network and Service Management Pub Date : 2024-09-10 DOI:10.1109/TNSM.2024.3457579
Yoga Suhas Kuruba Manjunath;Sihao Zhao;Xiao-Ping Zhang;Lian Zhao
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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 time-distributed wrapper on deep-learning layers to help extract pseudo-temporal features and spatio-temporal features. Pseudo-temporal features are mathematically complex to explain since, in deep learning, a black box extracts them. However, the features are temporal because of the time-distributed wrapper; therefore, we call them pseudo-temporal features. Since our method is efficient in learning holistic-temporal features, we can extend our method to both conventional and CoS NTC. Our solution proves that pseudo-temporal and spatial-temporal features can significantly improve the robustness and performance of any NTC. We analyze the solution theoretically and experimentally on different real-world datasets. The experimental results show that the holistic-temporal time-distributed feature learning method, on average, is 13.5% more accurate than the state-of-the-art conventional and CoS classifiers.
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用于物联网网络流量分类的时间分布式特征学习
基于深度学习的网络流量分类(NTC)技术,包括传统和服务分类器(CoS)分类器,是一种流行的工具,有助于物联网(IoT)网络的服务质量(QoS)和无线电资源管理。整体时态特征包括包内、包之间和流之间的间时态特征、内时态特征和伪时态特征,提供关于网络服务的最大信息,而不依赖于问题中定义的类。目前解决方案中传统的时空特征只提取了数据包和流之间的时空信息,忽略了物联网流量中数据包和流内部的信息。因此,我们提出了一种新的、高效的、整体的基于深度学习的NTC特征提取方法,利用时间分布特征学习来最大化NTC的准确性。我们在深度学习层上应用时间分布包装器来帮助提取伪时间特征和时空特征。伪时间特征在数学上很难解释,因为在深度学习中,它们是由一个黑箱提取出来的。然而,由于时间分布的包装器,这些特征是暂时的;因此,我们称它们为伪时间特征。由于我们的方法在学习整体时间特征方面是有效的,我们可以将我们的方法扩展到传统和CoS NTC。我们的解决方案证明了伪时间和时空特征可以显著提高任意NTC的鲁棒性和性能。我们在不同的现实世界数据集上对该解决方案进行了理论和实验分析。实验结果表明,整体时间分布特征学习方法比最先进的传统分类器和CoS分类器平均准确率提高13.5%。
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来源期刊
IEEE Transactions on Network and Service Management
IEEE Transactions on Network and Service Management Computer Science-Computer Networks and Communications
CiteScore
9.30
自引率
15.10%
发文量
325
期刊介绍: IEEE Transactions on Network and Service Management will publish (online only) peerreviewed archival quality papers that advance the state-of-the-art and practical applications of network and service management. Theoretical research contributions (presenting new concepts and techniques) and applied contributions (reporting on experiences and experiments with actual systems) will be encouraged. These transactions will focus on the key technical issues related to: Management Models, Architectures and Frameworks; Service Provisioning, Reliability and Quality Assurance; Management Functions; Enabling Technologies; Information and Communication Models; Policies; Applications and Case Studies; Emerging Technologies and Standards.
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