HAST-IDS: Learning Hierarchical Spatial-Temporal Features Using Deep Neural Networks to Improve Intrusion Detection
Wei Wang(University of Science and Technology of China), Ming Zhu(Anhui University), Yiqiang Sheng(Chinese Academy of Sciences), Xuewen Zeng(Chinese Academy of Sciences), Yongzhong Huang(Guilin University of Electronic Technology), Jinlin Wang(Chinese Academy of Sciences), Xiaozhou Ye(Chinese Academy of Sciences)
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