An empirical evaluation for the intrusion detection features based on machine learning and feature selection methods
Mouhammd Alkasassbeh

TL;DR
This paper evaluates machine learning algorithms combined with feature selection methods for intrusion detection, demonstrating that genetic search with BayesNet achieves near-perfect accuracy on real-world data.
Contribution
It introduces an empirical assessment of ML algorithms and feature selection techniques for intrusion detection, highlighting the effectiveness of genetic search with BayesNet.
Findings
Genetic Search with BayesNet achieves 99.9% accuracy.
Feature selection improves classification performance.
ML algorithms perform well on real-world MIB dataset.
Abstract
Despite the great developments in information technology, particularly the Internet, computer networks, global information exchange, and its positive impact in all areas of daily life, it has also contributed to the development of penetration and intrusion which forms a high risk to the security of information organizations, government agencies, and causes large economic losses. There are many techniques designed for protection such as firewall and intrusion detection systems (IDS). IDS is a set of software and/or hardware techniques used to detect hacker's activities in computer systems. Two types of anomalies are used in IDS to detect intrusive activities different from normal user behavior. Misuse relies on the knowledge base that contains all known attack techniques and intrusion is discovered through research in this knowledge base. Artificial intelligence techniques have been…
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Taxonomy
TopicsNetwork Security and Intrusion Detection · Anomaly Detection Techniques and Applications · Internet Traffic Analysis and Secure E-voting
MethodsSupport Vector Machine
