Weakly-supervised IDS with abnormal-preserving transformation learning.

Autor: TAN Yu-song, WANG Wei, JIAN Song-lei, YI Chao-xiong
Zdroj: Computer Engineering & Science / Jisuanji Gongcheng yu Kexue; May2024, Vol. 46 Issue 5, p801-809, 9p
Abstrakt: Network intrusion detection systems are crucial for maintaining network security, and there is currently limited research on intrusion detection scenarios with only a few abnormal markers of network data. This paper designs a weakly-supervised learning intrusion detection model, called WIDSAPL, based on the anomaly retention of data. The detection model consists of four parts: data transformation layer, representation learning layer, transformation classification layer, and anomaly discrimination layer. By using a set of learnable encoders to map samples to different regions and compress them into a hypersphere, the label information of abnormal samples is used to learn the classification boundaries of normal and abnormal samples, and the abnormal score of the samples is obtained. Testing the WIDS-APL system on four datasets demonstrates the effectiveness and robustness of the system, with improvements in the AUC-ROC values of 4.80%, 5.96%, 1.58%, and 1.73% respectively compared to other mainstream methods. Furthermore, there are enhancements of 15.03%, 2.95%, 4.71%, and 9.23% in AUC-PR performance. [ABSTRACT FROM AUTHOR]
Databáze: Complementary Index