Litcius/Paper detail

An Intrusion Detection System Based on Normalized Mutual Information Antibodies Feature Selection and Adaptive Quantum Artificial Immune System

Ling Zhang, Zhang Jia Hao

2022International Journal on Semantic Web and Information Systems41 citationsDOIOpen Access PDF

Abstract

The intrusion detection system (IDS) has lower speed, less adaptability and lower detection accuracy especially for small samples sets. This paper presents a detection model based on normalized mutual antibodies information feature selection and adaptive quantum artificial immune with cooperative evolution of multiple operators (NMAIFS MOP-AQAI). First, for a high intrusion speed, the NMAIFS is used to achieve an effective reduction for high-dimensional features. Then, the best feature vectors are sent to the MOP-AQAI classifier, in which, vaccination strategy, the quantum computing, and cooperative evolution of multiple operators are adopted to generate excellent detectors. Lastly, the data is fed into NMAIFS MOP-AQAI and ultimately generates accurate detection results. The experimental results on real abnormal data demonstrate that the NMAIFS MOP-AQAI has higher detection accuracy, lower false negative rate and a higher adaptive performance than the existing anomaly detection methods, especially for small samples sets.

Topics & Concepts

Computer scienceIntrusion detection systemFeature selectionAdaptabilityMutual informationPattern recognition (psychology)Anomaly detectionArtificial immune systemArtificial intelligenceDetectorData miningFeature (linguistics)Classifier (UML)BiologyLinguisticsTelecommunicationsPhilosophyEcologyArtificial Immune Systems ApplicationsSARS-CoV-2 and COVID-19 Researchvaccines and immunoinformatics approaches