Journal of Jilin University(Information Science Ed
Previous Articles
HUANG Sihui, CHEN Wanzhong, LI Jing
Received:
Online:
Published:
Abstract: Because the intrusion detection based on traditional BP (Back Propagation) neural network has deficiency in the convergence speed and detection rate, a method based on ELM(Extreme Learning Machine) using PCA(Principal Component Analysis) is proposed. We use PCA to reduce the dimension of the extracted eigenmatrix and use ELM to detect four types of common attacks. The experimental results show that the accuracy of the proposed method can reach 98. 337 5%, and the detection time is as fast as 1. 851 7 s. This method also improves the detection rate and precision, and reduces the false positive rate and false negative rate. The proposed method achieves the improvement of these six criterions.
Key words: intrusion detection, back propagation neural network, extreme learning machine(ELM), principal component analysis(PCA)
CLC Number:
HUANG Sihui, CHEN Wanzhong, LI Jing. Network Intrusion Detection Based on Extreme Learning Machine and Principal Component Analysis[J].Journal of Jilin University(Information Science Ed, 2017, 35(5): 576-583.
0 / / Recommend
Add to citation manager EndNote|Reference Manager|ProCite|BibTeX|RefWorks
URL: http://xuebao.jlu.edu.cn/xxb/EN/
http://xuebao.jlu.edu.cn/xxb/EN/Y2017/V35/I5/576
Cited