GCN-MHSA: A novel malicious traffic detection method based on graph convolutional neural network and multi-head self-attention mechanism
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Published:2024-12
Issue:
Volume:147
Page:104083
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ISSN:0167-4048
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Container-title:Computers & Security
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language:en
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Short-container-title:Computers & Security
Author:
Chen JinfuORCID,
Xie HaodiORCID,
Cai SaihuaORCID,
Song Luo,
Geng BoORCID,
Guo Wuhao
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