4.6 Article

Hierarchical LSTM-Based Network Intrusion Detection System Using Hybrid Classification

Journal

APPLIED SCIENCES-BASEL
Volume 13, Issue 5, Pages -

Publisher

MDPI
DOI: 10.3390/app13053089

Keywords

hybrid classifier; network intrusion detection; hierarchical LSTM; dual LSTM

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This study analyzes the accurate intrusion detection performance by adjusting the amount of information used as features and suggests using the entire packet data for maximum detection rate. However, existing NIDSs are limited by the excessive number of features, leading to unrealistic training and slow classification speeds. The proposed NIDS utilizes hierarchical long short-term memory to effectively handle the entire packet information and achieve higher detection accuracy.
Most existing network intrusion detection systems (NIDSs) perform intrusion detection using only a partial packet data of fixed size, but they suffer to increase the detection rate. In this study, in order to find the cause of a limited detection rate, accurate intrusion detection performance was analyzed by adjusting the amount of information used as features according to the size of the packet and length of the session. The results indicate that the total packet data and all packets in the session should be used for the maximum detection rate. However, existing NIDS cannot be extended to use all packet data of each session because the model could be too large owing to the excessive number of features, hampering realistic training and classification speeds. Therefore, in this paper, we present a novel approach for the classifier of NIDSs. The proposed NIDS can effectively handle the entire packet information using the hierarchical long short-term memory and achieves higher detection accuracy than existing methods. Performance evaluation confirms that detection performance can be greatly improved compared to existing NIDSs that use only partial packet information. The proposed NIDS achieves a detection rate of 95.16% and 99.70% when the existing NIDS show the highest detection rate of 93.49% and 98.31% based on the F1-score using two datasets. The proposed method can improve the limitations of existing NIDS and safeguard the network from malicious users by utilizing information on the entire packet.

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