A Novel Online Incremental Learning Intrusion Prevention System
ORCID
- Bogdan Ghita: 0000-0002-1788-547X
Abstract
Attack vectors are continuously evolving in order to evade Intrusion Detection systems. Internet of Things (IoT) environments, while beneficial for the IT ecosystem, suffer from inherent hardware limitations, which restrict their ability to implement comprehensive security measures and increase their exposure to vulnerability attacks. This paper proposes a novel Network Intrusion Prevention System that utilises a Self-Organizing Incremental Neural Network along with a Support Vector Machine. Due to its structure, the proposed system provides a security solution that does not rely on signatures or rules and is capable to mitigate known and unknown attacks in real-time with high accuracy. Based on our experimental results with the NSL KDD dataset, the proposed framework can achieve on-line updated incremental learning, making it suitable for efficient and scalable industrial applications.
Publication Date
2019-01-01
Publication Title
2019 10th IFIP International Conference on New Technologies, Mobility and Security (NTMS)
Embargo Period
9999-12-31
Recommended Citation
Constantinides, C., Shiaeles, S., Ghita, B., & Kolokotronis, N. (2019) 'A Novel Online Incremental Learning Intrusion Prevention System', 2019 10th IFIP International Conference on New Technologies, Mobility and Security (NTMS), . Available at: 10.1109/ntms.2019.8763842
This item is under embargo until 31 December 9999