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A Deep Learning Approach to Network Intrusion Detection

Shone, N. and Ngoc, T.N. and Phai, V.D. and Shi, Q. (2018) A Deep Learning Approach to Network Intrusion Detection. IEEE Transactions on Emerging Topics in Computational Intelligence, 2 (1): 8264962. pp. 41-50. ISSN 2471285X

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Abstract

Network intrusion detection systems (NIDSs) play a crucial role in defending computer networks. However, there are concerns regarding the feasibility and sustainability of current approaches when faced with the demands of modern networks. More specifically, these concerns relate to the increasing levels of required human interaction and the decreasing levels of detection accuracy. This paper presents a novel deep learning technique for intrusion detection, which addresses these concerns. We detail our proposed nonsymmetric deep autoencoder (NDAE) for unsupervised feature learning. Furthermore, we also propose our novel deep learning classification model constructed using stacked NDAEs. Our proposed classifier has been implemented in graphics processing unit (GPU)-enabled TensorFlow and evaluated using the benchmark KDD Cup '99 and NSL-KDD datasets. Promising results have been obtained from our model thus far, demonstrating improvements over existing approaches and the strong potential for use in modern NIDSs. © 2017 IEEE.

Item Type: Article
Divisions: Faculties > Faculty of Information Technology
Identification Number: 10.1109/TETCI.2017.2772792
Uncontrolled Keywords: Anomaly detection; Classification (of information); Computer graphics; Computer graphics equipment; Graphics processing unit; Intrusion detection; Network security; Program processors; Auto encoders; Classification models; Human interactions; Learning techniques; Levels of detections; Network intrusion detection; Network intrusion detection systems; Unsupervised feature learning; Deep learning
Additional Information: Language of original document: English. All Open Access, Green.
URI: http://eprints.lqdtu.edu.vn/id/eprint/9592

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