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- Title
Machine Learning for Network Intrusion Detection—A Comparative Study.
- Authors
Al Lail, Mustafa; Garcia, Alejandro; Olivo, Saul
- Abstract
Modern society has quickly evolved to utilize communication and data-sharing media with the advent of the internet and electronic technologies. However, these technologies have created new opportunities for attackers to gain access to confidential electronic resources. As a result, data breaches have significantly impacted our society in multiple ways. To mitigate this situation, researchers have developed multiple security countermeasure techniques known as Network Intrusion Detection Systems (NIDS). Despite these techniques, attackers have developed new strategies to gain unauthorized access to resources. In this work, we propose using machine learning (ML) to develop a NIDS system capable of detecting modern attack types with a very high detection rate. To this end, we implement and evaluate several ML algorithms and compare their effectiveness using a state-of-the-art dataset containing modern attack types. The results show that the random forest model outperforms other models, with a detection rate of modern network attacks of 97 percent. This study shows that not only is accurate prediction possible but also a high detection rate of attacks can be achieved. These results indicate that ML has the potential to create very effective NIDS systems.
- Subjects
MACHINE learning; DATA security failures; RANDOM forest algorithms; MODERN society; COMPARATIVE studies
- Publication
Future Internet, 2023, Vol 15, Issue 7, p243
- ISSN
1999-5903
- Publication type
Article
- DOI
10.3390/fi15070243