Towards Network Traffic Monitoring Using Deep Transfer Learning

Harsh Dhillon, A. Haque
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引用次数: 13

Abstract

Network traffic is growing at an outpaced speed globally. The modern network infrastructure makes classic network intrusion detection methods inefficient to classify an inflow of vast network traffic. This paper aims to present a modern approach towards building a network intrusion detection system (NIDS) by using various deep learning methods. To further improve our proposed scheme and make it effective in real-world settings, we use deep transfer learning techniques where we transfer the knowledge learned by our model in a source domain with plentiful computational and data resources to a target domain with sparse availability of both the resources. Our proposed method achieved 98.30% classification accuracy score in the source domain and an improved 98.43% classification accuracy score in the target domain with a boost in the classification speed using UNSW -15 dataset. This study demonstrates that deep transfer learning techniques make it possible to construct large deep learning models to perform network classification, which can be deployed in the real world target domains where they can maintain their classification performance and improve their classification speed despite the limited accessibility of resources.
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基于深度迁移学习的网络流量监控
在全球范围内,网络流量正在以超高速增长。现代网络基础设施使得传统的网络入侵检测方法无法对大量网络流量进行分类。本文旨在提出一种利用各种深度学习方法构建网络入侵检测系统的现代方法。为了进一步改进我们提出的方案并使其在现实环境中有效,我们使用了深度迁移学习技术,将我们的模型在具有丰富计算和数据资源的源域中学习到的知识转移到具有稀疏可用性的目标域中。在UNSW -15数据集上,我们提出的方法在源域达到了98.30%的分类准确率,在目标域达到了98.43%的分类准确率,并提高了分类速度。本研究表明,深度迁移学习技术使得构建大型深度学习模型来执行网络分类成为可能,这些模型可以部署在现实世界的目标域中,在资源有限的情况下,它们可以保持分类性能并提高分类速度。
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