Author:
Chen Chen,Wei Gang,Qiang Fan,Wan Dejiang,Chen Guangyu
Reference5 articles.
1. Chen, C., Liu, S., Wang Yifei, Song, Y. and Zhu, Y. (2022) A Network intrusion detection method based on PSOGWO-SVM. Journal of Air Force Engineering University, 23(2): 97-105.
2. Chen, C., Song, Y., Yue, S., Xu, X., Zhou, L., Lv, Q. and Yang, L. (2022) FCNN-SE: An Intrusion Detection Model Based on a Fusion CNN and Stacked Ensemble. Applied Sciences, 12(17): 8601.
3. Milosevic, M. S., and Ciric, V. M. (2022) Extreme minority class detection in imbalanced data for network intrusion. Computers & Security, 123: 102940.
4. Li, X., Kong, K., Shen, H., Wei, Z., and Liao, X. (2022) Intrusion detection method based on imbalanced learning classification. Journal of Experimental & Theoretical Artificial Intelligence, 1–21.
5. Zong, W., Huang, G. B., and Chen, Y. (2013) Weighted extreme learning machine for imbalance learning. Neurocomputing, 101: 229-242.