Chen Zhuo, LYU Na. Network intrusion detection model based on random forest and XGBoost[J]. JOURNAL OF SIGNAL PROCESSING, 2020, 36(7): 1055-1064. DOI: 10.16798/j.issn.1003-0530.2020.07.004
Citation: Chen Zhuo, LYU Na. Network intrusion detection model based on random forest and XGBoost[J]. JOURNAL OF SIGNAL PROCESSING, 2020, 36(7): 1055-1064. DOI: 10.16798/j.issn.1003-0530.2020.07.004

Network intrusion detection model based on random forest and XGBoost

  • To improve the accuracy and real-time performance of intrusion detection models in complex net-work environments, a network intrusion detection model based on random forest and eXtreme Gra-dient Boosting (XGBoost) is proposed. First, the feature importance is calculated based on the ran-dom forest algorithm. A hybrid feature selection method combining filtering and embedded is used to reduce the feature dimension of the dataset. When detecting the sample category, the XGBoost algorithm based on cost-sensitive function and grid method tuning is used to improve Model accu-racy. Experimental simulation results show that compared with other machine learning algorithms, the proposed model greatly reduces processing time by more than 50% with higher detection accu-racy, and has better robustness and adaptability.
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