Producing More with Less: A GAN-based Network Attack Detection Approach for Imbalanced Data
2021 IEEE 24th International Conference on Computer Supported Cooperative Work in Design (CSCWD)(2021)
摘要
Machine learning techniques are shown to be effective for network attack detection systems in identifying malicious network behaviors. In the real-world environment, however, network attack traffic i soften hidden under a large amount of normal daily communication traffic. In this paper, to resolve such challenges that the large-scale data is difficult to be effectively labeled, we propose a data ...
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关键词
Conferences,Telecommunication traffic,Machine learning,Generative adversarial networks,Feature extraction,Collaborative work,Standards
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