Support Vector Machine for Network Intrusion and Cyber-Attack Detection
Title | Support Vector Machine for Network Intrusion and Cyber-Attack Detection |
Publication Type | Conference Paper |
Year of Publication | 2017 |
Authors | Ghanem, K., Aparicio-Navarro, F. J., Kyriakopoulos, K. G., Lambotharan, S., Chambers, J. A. |
Conference Name | 2017 Sensor Signal Processing for Defence Conference (SSPD) |
Date Published | dec |
ISBN Number | 978-1-5386-1663-5 |
Keywords | anomaly-based IDS, cyber-attack detection, cyber-security threats, Intrusion detection, Intrusion Detection Systems, learning (artificial intelligence), Local area networks, machine learning, Measurement, Metrics, ML techniques, network intrusion, Ports (Computers), privacy, pubcrawl, security of data, statistical analysis, statistical techniques, support vector machine, Support vector machines, telecommunication traffic, threat vectors, Training |
Abstract | Cyber-security threats are a growing concern in networked environments. The development of Intrusion Detection Systems (IDSs) is fundamental in order to provide extra level of security. We have developed an unsupervised anomaly-based IDS that uses statistical techniques to conduct the detection process. Despite providing many advantages, anomaly-based IDSs tend to generate a high number of false alarms. Machine Learning (ML) techniques have gained wide interest in tasks of intrusion detection. In this work, Support Vector Machine (SVM) is deemed as an ML technique that could complement the performance of our IDS, providing a second line of detection to reduce the number of false alarms, or as an alternative detection technique. We assess the performance of our IDS against one-class and two-class SVMs, using linear and non- linear forms. The results that we present show that linear two-class SVM generates highly accurate results, and the accuracy of the linear one-class SVM is very comparable, and it does not need training datasets associated with malicious data. Similarly, the results evidence that our IDS could benefit from the use of ML techniques to increase its accuracy when analysing datasets comprising of non- homogeneous features. |
URL | https://ieeexplore.ieee.org/document/8233268/ |
DOI | 10.1109/SSPD.2017.8233268 |
Citation Key | ghanem_support_2017 |
- network intrusion
- Training
- threat vectors
- telecommunication traffic
- Support vector machines
- support vector machine
- statistical techniques
- statistical analysis
- security of data
- pubcrawl
- privacy
- Ports (Computers)
- anomaly-based IDS
- ML techniques
- Metrics
- Measurement
- machine learning
- Local area networks
- learning (artificial intelligence)
- Intrusion Detection Systems
- Intrusion Detection
- cyber-security threats
- cyber-attack detection