Experimental Review of Neural-based approaches for Network Intrusion Management
Mario Di Mauro, Giovanni Galatro, Antonio Liotta

TL;DR
This paper reviews neural network techniques for network intrusion detection, evaluating their performance on updated datasets and analyzing trade-offs in resource use and accuracy to guide practical implementation.
Contribution
It provides a comprehensive experimental review of neural-based intrusion detection methods, including new datasets and performance analysis for practical insights.
Findings
Neural networks show promising detection accuracy.
Trade-offs exist between resource consumption and performance.
Updated datasets improve evaluation relevance.
Abstract
The use of Machine Learning (ML) techniques in Intrusion Detection Systems (IDS) has taken a prominent role in the network security management field, due to the substantial number of sophisticated attacks that often pass undetected through classic IDSs. These are typically aimed at recognising attacks based on a specific signature, or at detecting anomalous events. However, deterministic, rule-based methods often fail to differentiate particular (rarer) network conditions (as in peak traffic during specific network situations) from actual cyber attacks. In this paper we provide an experimental-based review of neural-based methods applied to intrusion detection issues. Specifically, we i) offer a complete view of the most prominent neural-based techniques relevant to intrusion detection, including deep-based approaches or weightless neural networks, which feature surprising outcomes; ii)…
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