Network Malicious Traffic Detection Model Based on Combined Neural Network | |
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Author | |
Abstract |
Network Intrusion Detection - With the development of computing technology, data security and privacy protection have also become the focus of researchers; along with this comes the issue of network link security and reliability, and these issues have become the focus of discussion when studying network security. Intrusion detection is an effective means to assist in network malicious traffic detection and maintain network stability; to meet the ever-changing demand for network traffic identification, intrusion detection models have undergone a transformation from traditional intrusion detection models to machine learning intrusion detection models to deep intrusion detection models. The efficiency and superiority of deep learning have been proven in fields such as image processing, but there are still some problems in the field of network security intrusion detection: the models are not targeted when processing data, the models have poor generalization ability, etc. The combinatorial neural network proposed in this paper can effectively propose a solution to the problems of existing models, and the CL-IDS model proposed in this paper has a better performance on the KDDCUP99 dataset as demonstrated by relevant experiments. |
Year of Publication |
2022
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Date Published |
dec
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Publisher |
IEEE
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Conference Location |
Changzhou, China
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ISBN Number |
978-1-66545-311-0
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URL |
https://ieeexplore.ieee.org/document/10137895/
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DOI |
10.1109/ACAIT56212.2022.10137895
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Google Scholar | BibTeX | DOI |