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    Título
    Network Intrusion Detection Based on Extended RBF Neural Network With Offline Reinforcement Learning
    Autor(es)
    Lopez-Martin, Manuel
    Sánchez-Esguevillas, Antonio
    Arribas, Juan Ignacio
    Carro, Belen
    Palabras clave
    Communication system security
    intrusion detection
    neural networks
    radial basis function networks
    Clasificación UNESCO
    1203.17 Informática
    Fecha de publicación
    2021-11-11
    Resumen
    Network intrusion detection focuses on classifying network traffic as either normal or attack carrier. The classification is based on information extracted from the network flow packets. This is a complex classification problem with unbalanced datasets and noisy data. This work extends the classic radial basis function (RBF) neural network by including it as a policy network in an offline reinforcement learning algorithm. With this approach, all parameters of the radial basis functions (along with the network weights) are learned end-to-end by gradient descent without external optimization. We further explore how additional dense hidden-layers, and the number of radial basis kernels influence the results. This novel approach is applied to five prominent intrusion detection datasets (NSL-KDD, UNSW-NB15, AWID, CICIDS2017 and CICDDOS2019) achieving better performance metrics than alternative state-of-the-art models. Each dataset provides different restrictions and challenges allowing a better validation of results. Analysis of the results shows that the proposed architectures are excellent candidates for designing classifiers with the constraints imposed by network intrusion detection. We discuss the importance of dataset imbalance and how the proposed methods may be critically important for unbalanced datasets.
    URI
    https://hdl.handle.net/10366/154846
    DOI
    10.1109/ACCESS.2021.3127689
    Versión del editor
    https://doi.org/10.1109/ACCESS.2021.3127689
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    • INCyL. Unidad de Excelencia iBRAINS-IN-CyL [141]
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