Discriminative spatial-temporal feature learning for modeling network intrusion detection systems

IF 0.9 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
S. Wanjau, G. Wambugu, A. Oirere, G. M. Muketha
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引用次数: 0

Abstract

Increasing interest and advancement of internet and communication technologies have made network security rise as a vibrant research domain. Network intrusion detection systems (NIDSs) have developed as indispensable defense mechanisms in cybersecurity that are employed in discovery and prevention of malicious network activities. In the recent years, researchers have proposed deep learning approaches in the development of NIDSs owing to their ability to extract better representations from large corpus of data. In the literature, convolutional neural network architecture is extensively used for spatial feature learning, while the long short term memory networks are employed to learn temporal features. In this paper, a novel hybrid method that learn the discriminative spatial and temporal features from the network flow is proposed for detecting network intrusions. A two dimensional convolution neural network is proposed to intelligently extract the spatial characteristics whereas a bi-directional long short term memory is used to extract temporal features of network traffic data samples consequently, forming a deep hybrid neural network architecture for identification and classification of network intrusion samples. Extensive experimental evaluations were performed on two well-known benchmarks datasets: CIC-IDS 2017 and the NSL-KDD datasets. The proposed network model demonstrated state-of-the-art performance with experimental results showing that the accuracy and precision scores of the intrusion detection model are significantly better than those of other existing models. These results depicts the applicability of the proposed model in the spatial-temporal feature learning in network intrusion detection systems.
基于判别时空特征学习的网络入侵检测系统建模
随着人们对互联网和通信技术的日益关注和进步,网络安全已成为一个充满活力的研究领域。网络入侵检测系统(nids)已经发展成为网络安全中不可缺少的防御机制,用于发现和预防恶意网络活动。近年来,研究人员在nids的开发中提出了深度学习方法,因为它们能够从大量数据中提取更好的表示。在文献中,卷积神经网络架构被广泛用于空间特征的学习,而长短期记忆网络被用于时间特征的学习。本文提出了一种从网络流中学习判别性时空特征的网络入侵检测混合方法。提出了一种二维卷积神经网络智能提取网络流量数据样本的空间特征,并利用双向长短期记忆提取网络流量数据样本的时间特征,形成了一种用于网络入侵样本识别和分类的深度混合神经网络体系结构。在两个著名的基准数据集上进行了广泛的实验评估:CIC-IDS 2017和NSL-KDD数据集。实验结果表明,该网络模型的准确率和精度分数明显优于现有的入侵检测模型。这些结果说明了该模型在网络入侵检测系统的时空特征学习中的适用性。
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来源期刊
Journal of Computer Security
Journal of Computer Security COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
1.70
自引率
0.00%
发文量
35
期刊介绍: The Journal of Computer Security presents research and development results of lasting significance in the theory, design, implementation, analysis, and application of secure computer systems and networks. It will also provide a forum for ideas about the meaning and implications of security and privacy, particularly those with important consequences for the technical community. The Journal provides an opportunity to publish articles of greater depth and length than is possible in the proceedings of various existing conferences, while addressing an audience of researchers in computer security who can be assumed to have a more specialized background than the readership of other archival publications.
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