학술논문
A Deep Belief Networks Intrusion Detection Method Based on Generative Adversarial Networks
Document Type
Conference
Source
2024 5th International Seminar on Artificial Intelligence, Networking and Information Technology (AINIT) Artificial Intelligence, Networking and Information Technology (AINIT), 2024 5th International Seminar on. :471-476 Mar, 2024
Subject
Language
Abstract
In response to the substantial threat that Internet attacks pose to data center network security, researchers have proposed several deep learning-based methods for detecting network intrusions. However, while algorithms are constantly improving in terms of accuracy, their stability in the face of insufficient attack samples is a major obstacle. To solve the issues of insufficient attack samples and low detection accuracy in network intrusion detection, this paper proposes a deep confidence network intrusion detection method G-DBN based on GAN. The model is based on the malicious sample extension of the generative adversarial network, and it can produce adversarial samples using malicious network flows as original samples. Furthermore, this paper uses deep belief network technology to create and assess the efficacy of the G-DBN model in detecting network attacks, comparing it to standard DBN models and other network intrusion detection techniques. Experimental results show that compared to the standard three-layer DBN method, the G-DBN method described in this paper improves the detection accuracy of attack samples by 6.46% and better meets the performance requirements of current practical applications.