IDS-attention: an efficient algorithm for intrusion detection systems using attention mechanism

被引:0
作者
FatimaEzzahra Laghrissi
Samira Douzi
Khadija Douzi
Badr Hssina
机构
[1] FSTM University Hassan II,
[2] FMPR University Mohammed V,undefined
来源
Journal of Big Data | / 8卷
关键词
Intrusion detection systems; Deep learning; Attention mechanism; LSTM; UMAP; Chi-Square; PCA; Mutual information;
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学科分类号
摘要
Network attacks are illegal activities on digital resources within an organizational network with the express intention of compromising systems. A cyber attack can be directed by individuals, communities, states or even from an anonymous source. Hackers commonly conduct network attacks to alter, damage, or steal private data. Intrusion detection systems (IDS) are the best and most effective techniques when it comes to tackle these threats. An IDS is a software application or hardware device that monitors traffic to search for malevolent activity or policy breaches. Moreover, IDSs are designed to be deployed in different environments, and they can either be host-based or network-based. A host-based intrusion detection system is installed on the client computer, while a network-based intrusion detection system is located on the network. IDSs based on deep learning have been used in the past few years and proved their effectiveness. However, these approaches produce a big false negative rate, which impacts the performance and potency of network security. In this paper, a detection model based on long short-term memory (LSTM) and Attention mechanism is proposed. Furthermore, we used four reduction algorithms, namely: Chi-Square, UMAP, Principal Components Analysis (PCA), and Mutual information. In addition, we evaluated the proposed approaches on the NSL-KDD dataset. The experimental results demonstrate that using Attention with all features and using PCA with 03 components had the best performance, reaching an accuracy of 99.09% and 98.49% for binary and multiclass classification, respectively.
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共 73 条
[1]  
Denning DE(1987)An intrusion-detection model IEEE Trans Soft Eng. SE–13 222-232
[2]  
Ramadan RA(2020)A novel hybrid intrusion detection system (IDS) for the detection of internet of things (IoT) network attacks Ann Emerg Technol Comput 186 0263-2241
[3]  
Yadav K(2021)An intelligent cognitive computing based intrusion detection for industrial cyber-physical systems Measurement 16 6689134-7906
[4]  
Maha M(2020)Intrusion detection system for internet of things based on temporal convolution neural network and efficient feature engineering Wireless Commun Mobile Comput 13 4-7906
[5]  
Althobaiti K(2021)Effectiveness of focal loss for minority classification in network intrusion detection systems Symmetry 91 0045-38
[6]  
Mohan KP(2021)An intrusion detection method for industrial control systems based on bidirectional simple recurrent unit Comput Electrical Eng 14 3-1780
[7]  
Deepak G(2021)A novel intrusion detection system for internet of things network security J Inform Technol Res 9 834-102
[8]  
Sachin K(2021)HCRNNIDS: hybrid convolutional recurrent neural network-based network intrusion detection system Processes 91 0045-387
[9]  
Mansour RF(2021)Intrusion detection in cyber-physical systems using a generic and domain specific deep autoencoder model Comput Electrical Eng 3 594-266
[10]  
Derhab A(2021)A novel GPU based intrusion detection system using deep autoencoder with Fruitfly optimization SN Appl Sci. 61 526-33665