A Comparison of Neural-Network-Based Intrusion Detection against Signature-Based Detection in IoT Networks
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Published:2024-03-14
Issue:3
Volume:15
Page:164
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ISSN:2078-2489
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Container-title:Information
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language:en
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Short-container-title:Information
Author:
Schrötter Max1ORCID, Niemann Andreas1, Schnor Bettina1ORCID
Affiliation:
1. Department of Computer Science, University of Potsdam, 14476 Potsdam, Germany
Abstract
Over the last few years, a plethora of papers presenting machine-learning-based approaches for intrusion detection have been published. However, the majority of those papers do not compare their results with a proper baseline of a signature-based intrusion detection system, thus violating good machine learning practices. In order to evaluate the pros and cons of the machine-learning-based approach, we replicated a research study that uses a deep neural network model for intrusion detection. The results of our replicated research study expose several systematic problems with the used datasets and evaluation methods. In our experiments, a signature-based intrusion detection system with a minimal setup was able to outperform the tested model even under small traffic changes. Testing the replicated neural network on a new dataset recorded in the same environment with the same attacks using the same tools showed that the accuracy of the neural network dropped to 54%. Furthermore, the often-claimed advantage of being able to detect zero-day attacks could not be seen in our experiments.
Funder
Deutsche Forschungsgemeinschaft
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