Abstract

Network intrusion detection identifies malicious activity in the network by analyzing the behavior of network traffic. As an important part of network intrusion detection, feature extraction plays a crucial role in improving the performance of intrusion detection. This research proposes a novel secondary feature extraction method called L-KPCA based on the Liner Discriminant Analysis (LDA) and Kernel Principal Component Analysis (KPCA), to provide efficient features for network intrusion detection. While maintaining the effectiveness of processing nonlinear data in network traffic, the use of LDA effectively compensates for the problem that KPCA only focuses on the analysis of features in terms of variance and ignores the performance of features in terms of mean. Extensive experimental results verify that the use of the proposed, L-KPCA can make the intrusion detection classification model perform better in terms of recognition accuracy and recall.

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