Analysis of Machine Learning Techniques for Intrusion Detection System: A Review
International Journal of Computer Applications2015Vol. 119(3), pp. 19–29
Citations Over TimeTop 15% of 2015 papers
Abstract
Security is a key issue to both computer and computer networks. Intrusion detection System (IDS) is one of the major research problems in network security. IDSs are developed to detect both known and unknown attacks. There are many techniques used in IDS for protecting computers and networks from network based and host based attacks. Various Machine learning techniques are used in IDS. This study analyzes machine learning techniques in IDS. It also reviews many related studies done in the period from 2000 to 2012 and it focuses on machine learning techniques. Related studies include single, hybrid, ensemble classifiers, baseline and datasets used.
Related Papers
- → Machine Learning and Deep Learning Approaches for Intrusion Detection: A Comparative Study(2022)5 cited
- → Self Adaptive Intrusion Detection Technique Using Data Mining Concept in an Ad-hoc Network(2016)7 cited
- → MLNN: A Novel Network Intrusion Detection Based on Multilayer Neural Network(2021)2 cited
- Multi-Neural Network Based Intrusion Detection Technology(2008)
- APPRA in Network Intrusion Detection(2005)